• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Diagnosis of Autism Spectrum Disorder by Imperialistic Competitive Algorithm and Logistic Regression Classifier

    2023-12-15 03:56:44ShabanaZiyadLiyakathunisaEmanAljohaniandSaeed
    Computers Materials&Continua 2023年11期

    Shabana R.Ziyad,Liyakathunisa,Eman Aljohani and I.A.Saeed

    1Department of Computer Science,College of Computer Engineering and Sciences,Prince Sattam bin Abdulaziz University,Al Kharj,16274,Saudi Arabia

    2Department of Computer Science,College of Computer Science and Engineering,Taibah University,Madinah,41411,Saudi Arabia

    3Department of Information Systems,College of Computer Engineering and Sciences,Prince Sattam bin Abdulaziz University,Al Kharj,16274,Saudi Arabia

    ABSTRACT Autism spectrum disorder(ASD),classified as a developmental disability,is now more common in children than ever.A drastic increase in the rate of autism spectrum disorder in children worldwide demands early detection of autism in children.Parents can seek professional help for a better prognosis of the child’s therapy when ASD is diagnosed under five years.This research study aims to develop an automated tool for diagnosing autism in children.The computer-aided diagnosis tool for ASD detection is designed and developed by a novel methodology that includes data acquisition,feature selection,and classification phases.The most deterministic features are selected from the self-acquired dataset by novel feature selection methods before classification.The Imperialistic competitive algorithm(ICA)based on empires conquering colonies performs feature selection in this study.The performance of Logistic Regression (LR),Decision tree,K-Nearest Neighbor (KNN),and Random Forest (RF)classifiers are experimentally studied in this research work.The experimental results prove that the Logistic regression classifier exhibits the highest accuracy for the self-acquired dataset.The ASD detection is evaluated experimentally with the Least Absolute Shrinkage and Selection Operator(LASSO)feature selection method and different classifiers.The Exploratory Data Analysis(EDA)phase has uncovered crucial facts about the data,like the correlation of the features in the dataset with the class variable.

    KEYWORDS Autism spectrum disorder;feature selection;imperialist competitive algorithm;LASSO;logistic regression;random forest

    1 Introduction

    Autism spectrum disorder is a neurological disorder that results in developmental setbacks affecting the children’s social,communication,and behavioral activities.Children affected by ASD have difficulty interacting with parents,teachers,and friends.They show restricted interest in communicating with others.Such children suffer from maintaining eye contact with the people that they interact with.They have poor attention-holding ability,making it difficult to listen to others.According to statistics,16 to 18 percent of children diagnosed with Down syndrome have autism[1].Autism-affected children are oversensitive to noise and insensitive to pain.They seem lost in their thoughts,show difficulty recognizing their emotions,and sometimes have unusual memory.ASD starts in childhood but persists even when the person reaches adulthood.In 2021,the Center for Disease Control and Prediction,United States of America,reported that approximately 1 in 44 children is diagnosed with ASD.Children are usually diagnosed with ASD at the age of 3 years[2].Autism can be detected in children under three years,and language delays can be seen in children as early as 18 months[3].Children detected with ASD below five years,when trained with occupational and speech therapies,find remarkable improvement in their communication skills.Repetitive and stereotyped behavior,lack of social and language skills,poor eye contact,and delayed speech are warning alarms of autism to the parents.In very young children,a social skills assessment is challenging.Therefore,the limited eye contact with the parents,inability to bring an object,and inability to imitate the parent are the critical factors in identifying a child affected with ASD.In ASD,children aged 15 to 24 months encounter a degradation in language development.The child should maintain joint attention with the caregiver in sharing a social interaction between 8 to 16 months.ASD children generally lack this joint attention skill,and it is a critical feature in identifying ASD at an early age.All these signs and symptoms aid the parents or guardians in detecting ASD at an early stage[4].Early detection of ASD helps in early intervention,improving the children’s learning ability,communication,and social skills.

    The study collected ASD children data studying in special schools under the age of 15 and was named as Questionnaire based ASD(QBASD)dataset.The QBASD dataset has been carefully selected to include questions about the vital features to detect autism in children.The study identifies the most discriminating features from the dataset by feature selection methods of LASSO and the ICA.The selected feature set improves efficiency in classifying the test data by diagnosing the child as ASD or non-ASD.LR,Decision tree,KNN,and RF classifiers classify ASD from non-ASD subjects.The novelty of this research work lies in the design of CADx,and the questionnaire-based dataset collected from parents of ASD and normal children.The proposed methodology with the ICA algorithm for feature selection in the QBASD dataset and LR as a classifier is a novel methodology for diagnosing autism with machine learning.This CADx aims to detect autism early by training the model with data samples of children under five.

    2 Materials and Methods

    This section discusses the related study on early diagnosis of ASD in children.Researchers have identified several biomarkers to detect ASD at an early age.Any neuroimaging modality that discovers abnormal patterns in brain activity could detect ASD.Children with autism have typical morphological patterns in the Electroencephalogram (EEG) signals.One-dimensional local binary pattern extracts the features from EEG signals.The spectrogram images are generated from featureextracted images using a short-time Fourier transform.The Relief algorithm carries out feature ranking and selection.With the SVM classifier,the model achieved an accuracy of 96.44% [5].Magnetic Resonance Imaging (MRI) and resting state functional Magnetic Resonance Imaging(fMRI) images are studied to represent anatomical and functional connectivity abnormalities.The classification accuracy is 75% and 79% for fMRI and MRI data.The fusion of both datasets gives a higher accuracy of 81% [6].The shortcoming of the above research work is that children must undergo neuroimaging tests,which is an unpleasant experience for them.Sixty acoustic features were extracted from the audio recording of 712 ASD children,and the feature selection method selected twenty-one deterministic features.Convolution Neural Network (CNN) showed improved results compared to Support Vector Machine(SVM)and Linear Regression in this study[7].Facial expressions and vocal characteristics are biomarkers and detect ASD with 73%accuracy.The signs like reduced social smiling,higher voice frequency,and harmonic-to-noise ratio are significant biomarkers for ASD detection [8].The eye movement data of ASD children is analyzed to distinguish between autism and non-autism subjects.The eye gaze feature used in the supervised machine learning model aids in ASD detection.The model achieved an accuracy of 86% and a sensitivity of 91% [9].This study investigated the gaze behavior with classifiers such as SVM,Decision tree,Linear discriminant analysis,and RF.Classification accuracy for the visual fixation feature is 82.64% [10].The features extracted from acoustic,video,and handwriting time series classified ASD children and children with neurotypical development.Eigenvalues of this correlation presented the coordination of speech with handwriting as a potential biomarker for classifying subjects [11].The ASD subjects have unusual facial expressions and gaze patterns when they look at complex scenes.The authors have leveraged this fact to classify healthy subjects from ASD subjects.Classification accuracy is 85.8%for studying facial expressions from photographs[12].The research studies discussed so far have the shortcoming of being expensive to develop,time-consuming,and exhibiting unsatisfactory accuracy rates.This research study aims to collect data from parents regarding their children’s behavior to identify the most deterministic biomarkers for ASD detection.Selecting a highly deterministic feature set can improve the classification model performance to a great extent.

    2.1 Proposed Methodology for Diagnosis of ASD

    The proposed methodology is a novel ICA feature selection algorithm with an LR classifier.The proposed study is a promising methodology based on the data collected through a parentreported questionnaire based on the child’s behavior.A diligent study of the biomarkers for ASD resulted in the questionnaire.The signs identified with the natural evolutionary history of ASD in infants are categorized.The first category is Prenatal,to study preconception through the gestation period and identifies biomarkers that trigger the development of ASD in offspring.The questionnaire includes questions on the mother’s health condition,socio-economic status,and medication details to study this biomarker.The second category is pre-symptomatic,where the child shows chances of developing ASD [13].The questions based on social interactions and emotional responses predict the child’s potential risk of developing ASD.The communication and cognitive components are the questionnaires confirming the diagnosis of ASD in children.The questionnaire in this novel study included questions in line with the biomarkers that identify the signs of ASD in infants from the prenatal stage to the toddler stage.This study aims at developing a CADx that classifies ASD children from non-ASD children.The proposed methodology is compared with the LASSO feature selection method,followed by LR for the classification of the QBASD dataset.Fig.1 is the block diagram for the proposed CADx for the autism diagnosis.

    2.2 Datasets

    The QBASD dataset is the questionnaire filled out by parents of children under 15.The questionnaire was designed after discussions with medical practitioners and experts giving therapy and help to ASD children.The questionnaire includes all questions related to the vital signs of ASD detection in children.The questions included in the questionnaire are the child’s social skill assessment,emotional response to parents or caregivers,communication skills,behavior issues,sensory impulses,the cognitive component,and history of the mother’s medications.The dataset has many samples of responses from parents of ASD-detected children under five years.Parents of special education schools and individuals filled out the QBASD questionnaire.A short description of the research study informed the parents the objective of the research study and motivated them to fill out the questionnaire accurately.The dataset QBASD is the downloaded responses from QBASD questionnaire.The dataset has a sample size of 321 and is balanced data.The dataset excluding personal information like age,gender,and nationality of the child has questions from Q1 to Q29.

    Figure 1:Proposed methodology for AI-based ASD detection tool

    2.3 Feature Selection

    Machine Learning (ML) algorithms detect patterns and make accurate classifications and predictions about the data.The performance of the ML algorithm depends on the dataset’s quality.Noisy,inadequate,and redundant data negatively impact classification or prediction accuracy.The response variable specifies the class for a particular data sample in any labeled dataset.It is optional that all the features strongly correlate with the response variable.Certain features are redundant,insignificant,and correlate poorly with the response variable.Elimination of in-significant features results in dimensionality reduction.Filter,wrapper,and hybrid methods are conventional feature selection methods[14].In the high-dimension dataset,certain features have a low correlation with the response variable of the dataset.Feature selection aims to construct a new dataset from the original dataset with features highly correlated with the response variable [15].For high dimensional data sets,penalized regression is a promising approach for most deterministic variable selection.LASSO penalization is an excellent method for feature selection in the high-dimensional dataset.This study compares the Imperialistic competitive algorithm with the LASSO feature selection method.The methods are studied experimentally by common classifiers,and results are recorded in the result and discussion section.

    2.3.1 Least Absolute Selection and Shrinkage Operator

    In logistic lasso ifnis the number of samples collected for the datasetD.Letfsbe the feature set.{X1,X2,X3,...,Xm}be the feature variable of the feature setfs.Letmbe the number of features infs.Each sample in the datasetDis denoted asxi.xiis a 1×fvector representing a single subject’s data.Let Y be the response variable for the two-dimensional tablen×fs.Eachyiis the element of the vector Y representing the disorder’s presence or absence for the related sample.Ifnis the sample size,then leti∈{1,2,...,n}.In linear regression,the relationship between X and Y is linear[16].

    mdenotes the coefficient vector representing the relationship between response variable Y and the variables in the feature setfs.In some datasets,the number of features is greater than the number of samples,resulting in poor regression performance.Therefore,the LASSO feature selection method is a promising solution to this problem[17].The LASSO analyzes the importance of each featurefinfs.The logistic model L is represented as Eq.(2).

    β0is the intercept,andβis the Regression coefficient associated with dataset features.In this study,the number of samples is greater than the number of features;therefore,n >m.The penalized logistic lasso is given in Eq.(3).

    whereλis the regularization parameter,andpenl(λ)is defined in Eq.(4).

    The critical factor is the selection of penalization parameterλ.The penalization parameter directly impacts the number of selected feature variables and the degree to which they are penalized to zero[16].A higher value ofλreduces all the coefficients of feature variablefsto zero,and in turn,the model loses the most deterministic feature variable.A lower value ofλthat is almost zero includes redundant and noisy variables in the feature set.Although many different methods are available forλselection,cross-validation is the most widely used method for optimumλvalue selection.

    A feature selection step before classification shows significant improvement in classification performance.LASSO feature selection method selects the feature variable setthat is highly correlated with the response variable Y.The feature setselected by LASSO matches with the vital signs medical practitioners diligently analyze to detect ASD in children at an early age.

    2.3.2 ASD Detection Algorithm with LASSO

    The following subsection is the algorithm for the proposed methodology:

    Input:QBASD dataset.

    Output:Classification of the test sample data.

    Step 1:Convert the text dataset into a numerical dataset and represent it as QBASD.

    Step 2:The feature selection is carried out on the dataset QBASD using LASSO.

    Step 3:The reduced feature set QBASD’is the input to the LR classifier.

    Step 4:Evaluate the proposed methodology using standard metrics.

    Step 5:Compare the proposed methodology with the other ML algorithms.

    2.3.3 Imperialist Competitive Algorithm

    Atashpaz-Gargari et al.developed the ICA algorithm,a metaheuristic algorithm with improved convergence ability,in 2007[19].The ICA algorithm leverages the idea of colonization,a simulation of the political process of imperialism.The powerful countries overpowered the weaker countries with their military resources,making them part of their colonies.ICA is an optimization algorithm based on the concept of political conquer.ICA algorithms find their application in networking and industrial engineering.In Industrial engineering,ICA is an optimization algorithm that optimizes the problems on U-type stochastic assembly line balancing [20],model sequencing [21],assembly sequence planning[22],engineering design,and production planning[23].One of the latest research works uses the ICA and Bat algorithm for feature selection before applying the ML algorithm for breast cancer prediction[24].The algorithm considers all the entities in the population as countries.Some strong countries in the population are imperialist empires,and others are colonies of the selected imperialists.Initially,colonies were distributed to the imperialist states according to their power.In each competition,the colonies move towards the relevant imperialistic empire.The competition is assessed by the imperialistic empire’s total cost and the percentage of the mean cost of colonies.The empires grew in power by attracting the colonies of competitor empires.The power of the empire is calculated based on the cost function.The empire that has power lesser than the previous competition is eliminated from the competition.As the rounds of competitions progress some empires become stronger in power,and others become weaker.This gradual process of imperialistic empires becoming stronger,some getting weaker,and finally converging as a single large empire is characteristic of an optimization algorithm [25].This algorithm is effective in selecting the most discriminating features for the dataset.In the proposed study,there are 28 features in the dataset.Three significant features from the feature set are assigned as initial imperialistic states.The selected feature set extracted by the LASSO method are listed in Table 1.Table 2 shows the list of features selected by ICA as the best-discriminating feature set for the QBASD dataset.

    Table 1: LASSO reduced feature set for QBASD dataset

    Table 2: ICA reduced feature set for QBASD dataset

    According to the feature importance ranking,Q11,Q13,and Q22 are set as imperialistic states.The remaining 25 features are set as colonies.The significant features or countries based on their ability to increase the classification performance are retained in the imperialistic states.The cost function for the metaheuristic algorithm should be a multimodal function with many minima location and just one global minima.The metaheuristic algorithm tries to find the ideal solution in a landscape;hence,multimodal cost functions are suitable for testing the searchability of any metaheuristic algorithm.Michalewicz is a multimodal cost function suitable for problems with fewer global optimum solutions in the search space[26].fcost(x)is defined according to Eq.(6).

    wherexivaries between 0 toπ,nis the number of features in the search space.The algorithm finds the cost of all countries.The value is normalized by finding the difference of thefcost(x)of each country and the maximum of thefcost(x).The total cost of the imperialist empire is computed by the sum of country’s cost andλtimes the mean cost of the imperialist state.Theλvalue is set as 0.03.This is 30%of the mean cost of the imperialist empire contributes to the total cost.Normalized costs of the countries are computed based on the power of the state.The elimination is done based on the power ranking.The proposed algorithm sets the parameters asNp=29,Ni=3,Ncl=26,Nd=200,revolution rate=0.3,and assimilation coefficientβ=2.

    2.3.4 Algorithm for Feature Selection Using ICA

    Step 1:SetNpas the initial population of countries.SetNdas the number of decades.

    Step 2:SetNeis the best population set as empires.

    SetNcl=Np-Ne

    Step 3:Initialize the country list as a binary string with len{fs}

    Step 4:Repeat until k<Nd

    Step 4.1:For each of the empires

    Step 5:Select the best feature set

    Step 6:Classification is performed with the most common classifiers.

    Step 7: Evaluate the performance of the classifiers with metrics of accuracy,precision,and F1-score.

    2.3.5 ASD Detection Algorithm with ICA

    Input:QBASD dataset.

    Output:Classification of the test data.

    Step 1:Convert the text ASD dataset into a numerical dataset and represent it asQBASD.

    Step 2:The feature selection is made on datasetQBASDusing the ICT feature selection method.

    Step 3:The reduced feature set is given as the input to the LR classifier.

    Step 4:Evaluate the proposed methodology using standard metrics.

    Step 5:Compare the proposed methodology with the other ML algorithms.

    2.4 Classification

    The classification task aims to classify the new data sample into one of the labeled classes based on the pattern of the training dataset.Given a dataset D with a unique feature setfs given as{x1,x2,x3,...,xi,...,xn}.The output response variableyifor everyxiis a zero or one.The Y response variable represents the labeled class for the specific data sample.LR method computes the probability of the data sample belonging to a binary class[27].

    The linear model of the problem isy=xβ+?,where y is the response variable column vector,xis the dataset matrix,βis the parameter,and?is the error.In the equation,y is a random variable with a probability distributionP(yi).

    The logit function implicitly places a separating hyperplane in the input space between the two instances[28].Decision tree algorithms is a supervised learning algorithm that makes effective classification of the data based on multiple covariates.The decision tree classifier is a tree-structured classifier suitable for classifying medical data.The decision tree algorithm selects the most discriminating feature from the dataset and sets one of these features as the tree’s root.The tree is built by choosing the best attributes in the feature set as the decision nodes.As the tree grows,it splits the data samples into groups based on the decision nodes.The leaf nodes divide the data into classes.In medical data,there are chances of developing skewed trees;hence the decision tree is the best classification method to split the heavily skewed trees into ranges[29].The root node classifies the dataset into disjoint sets.Selecting relevant features for each disjoint set and applying the same procedure constructs the complete tree.Any decision node generates nonoverlapping sub-datasets that are finally grouped as labeled classes by leaf nodes [30].Based on the features,the decision tree can classify the data sample as ASD or non-ASD.KNN is a classification algorithm that labels the test data based on the similarity index of the nearby k,an odd number of labeled data samples.The test data is classified as a class frequently occurring among the k data samples close to the test data.The RF is the most popular ensemble method that creates multiple base learners to classify a new data sample.The base learner models are decision trees.Dataset D has feature set f and sample size s.The row sampling with replacement is a technique that selects multiple data samples from D as input to the multiple base learners denoted as DTi.The feature sampling selects random features to be an input to the DTi.The base learners are trained with data samples.The trained base learner classifies the new test data sample and gives the output.As each base learner predicts different outputs,the final decision is based on a majority voting scheme.Row sampling and feature sampling improve the classification accuracy.The multiple decision trees convert new sample data with high variance to low variance[31].Fig.2 represents the flow chart for the proposed ASD detection system with the ICA algorithm.

    Figure 2:Flow chart for the proposed ASD detection system with ICA algorithm

    3 Results and Discussions

    The feature selection method,a preprocessing phase to classification,escalates the model’s performance by avoiding the overfitting of the data[32].In this research,an experimental study analyzes the model performance with the proposed feature selection algorithm.The proposed algorithms are implemented in Python using the dataset QBASD.The classification accuracy of common classifiers on the QBASD without feature reduction are tabulated in Table 3.

    Table 3: Classification metrics of ASD and non-ASD for QBASD dataset

    The receiver operating characteristics(ROC)curve is the graph showing the performance of the classification model.The graph plots the false positive rate along the x-axis and the true positive rate along the y-axis.The area under the curve(AUC)measures the area under the ROC curve.Fig.3 shows the ROC curve results for the QBASD dataset.Fig.3a shows the decision tree classifier has the highest performance metric compared to other classifiers.The decision tree performs best as the features at each node classify the dataset into two sets.LR performance could be better than the performance of the decision tree,as it is a more efficient prediction model than the classification model.KNN is a victim of the curse of dimensionality;hence,the performance is inferior for a complete QBASD dataset.High k values result in underfitting;low k values will result in overfitting.In RF,the recall rate is high as the true positives are high and false negatives are negligible for ASD class detection.The precision of the ASD detection model is low as false positives are high.

    Figure 3: (Continued)

    Figure 3:ROC curve for the classifiers based on QBASD(a)decision tree classifier(b)KNN classifier(c)LR classifier(d)RF classifier

    Table 4 shows the classification metrics for the proposed ASD detection model with the ICA feature reduction algorithm.The LR and RF classifiers outperform the other classifiers.RF has the advantage of being robust to outliers;hence this algorithm performs well with QBASD data.The data may have outliers as the data is based on the child’s behavior and social interactions.

    Table 4:Classification metrics for the proposed ASD detection algorithm with ICA on QBASD dataset

    Fig.4 shows the ROC curves after implementing the LASSO feature reduction algorithm and building classifiers in Python.The decision tree classifier works on a greedy approach;the decision at each level affects the next level,so the features affect the tree’s shape.The classifier performance could be better for small datasets.KNN is sensitive to outliers so a single outlier can change the classification boundary.It performs poorly as there may be outliers in the reduced dataset.LR performs exceptionally well for linear separable datasets.QBASD is a simple,linearly separable dataset;hence,LR performs exceptionally well.The Random Forest can handle outliers by binning the variables.It performs feature selection and builds its decision trees;therefore,the accuracy is high.

    Table 5 shows the classification metrics for the proposed ASD detection model with the LASSO feature reduction algorithm.LR shows improved performance compared to other classifiers.LR has the risk of overfitting in high-dimensional datasets.LR model shows increased accuracy for the QBASD dataset reduced by the LASSO method as the few features selected are highly correlated with the target class.

    Table 5: Classification metrics for the proposed ASD detection algorithm with LASSO on QBASD dataset

    Figure 4: ROC curve for LASSO-based algorithm on QBASD dataset (a) decision tree classifier(b)KNN classifier(c)LR classifier(d)RF classifier

    Fig.5 shows the ROC curves after implementing the ICA feature reduction algorithm and building classifiers in Python.The ROC curve for the decision tree shows a poor recall rate as the false negatives are high in the dataset.The precision rate is affected by the false positive rate.The LR shows high precision and recall rate as the false positives and negative counts are less for the classification model.

    Figure 5: ROC curve for LASSO-based algorithm on QBASD dataset (a) decision tree classifier(b)KNN classifier(c)LR classifier(d)RF classifier

    The RF classifier gives a poor precision rate as the false positives are high.A simple KNN classifier is robust with noisy data and performs well compared to sophisticated classifiers [33].KNN gives average accuracy for the ICA-based ASD detection algorithm.The optimum value of k also has an impact on the accuracy of the model.This study chooses the k value as five based on the trial-and-error method.The precision value is lower for non-ASD class detection than for ASD.In the medical field,precision in diagnosis is a significant factor.The LR gives improved accuracy,F1 score,and precision compared to other classifiers.The feature selection by LASSO and ICA modifies the dataset as a crisp dataset with few independent,uncorrelated features.Hence LR algorithm shows high performance for data with the feature set having independent variables[28].The reduced feature set includes features that make the dataset linearly separable,and LR gives improved results with QBASD[34].

    4 Exploratory Data Analysis Phase

    The data visualization of the QBASD dataset reveals some interesting facts regarding the questions in the QBASD questionnaire and ASD detection.Table 6 tabulates the essential questions related to the significant ASD signs in children under five.The CADx proposed in this study can detect ASD in children under five years as the symptoms analyzed are specifically for the age group of 3 months to five years.Fig.6 shows the data visualizations of the correlation of features of the QBASD dataset.The figures show how strongly and weakly the features are correlated with the response variables.All the significant features of the QBASD dataset are listed in Table 6.

    Table 6: Important features in QBASD dataset

    Fig.6a represents the visualization for questions Q4 and Q6 in the QBASD dataset.If the child shows restricted interest in playing or interacting with another child,irrespective of the smile factor,the child is classified as belonging to the ASD class.In contrast,if the child shows interest in playing with other children,the child belongs to the non-ASD class.Fig.6b is the visualization of questions Q8 and Q9.

    A child with ASD often has difficulty pointing to objects with the index finger.Fig.6b shows a child that cannot point the finger at anything interesting irrespective of being able to maintain eye contact,is diagnosed with ASD.A child capable of pointing fingers to indicate interest in objects and maintaining eye contact for a second or two falls under non-ASD class.Fig.6c is a visual analysis of Q13 and Q14.Children who make unusual noises and have stereotyped movements are classified as ASD.However,all ASD children do not need to make an unusual noise.Some children detected with ASD are free of stereotyped repetitive movements.

    Fig.6d is the visualization of Q15 and Q16.The graph shows that the child’s hyperactivity and self-injurious behavior classifies it as ASD.The child with no symptoms of hyperactivity or selfinjurious behavior belongs to the non-ASD class.Children with hyperactivity could have attention deficit hyperactivity disorder(ADHD),not mandatorily ASD.In the visualization,non-ASD children are found to have symptoms of hyperactivity.Fig.6e is the visualization of Q21 and Q22.Most children having inconsistent attention are classified as having ASD.The child’s delay in responding to the call is a essential biomarker for ASD detection.The visualization of questions Q25 and Q26 is shown in Fig.6f.

    The visualization’s conclusions are unclear on whether nutrient deficiency during pregnancy can cause ASD.There are very few samples where mothers are on medication;hence,it is difficult to conclude whether the mother’s medications cause ASD in the child.Fig.6g shows the most significant symptom of responding to social cues as a biomarker for ASD detection.Classification of a child as ASD or non-ASD depends on the ability to respond to the social cue.Fig.6h shows the strong correlation between the biomarker Q18 and ASD detection.The swarm plot shows that the children unable to follow the gaze are diagnosed with ASD.

    Fig.6i shows inconsistent attention is found more in ASD children than the non-ASD children.Fig.6j is the swarm plot between Q23 to Q29.Children with ASD have unusual memory,but children without ASD have a good memory.Hence,it cannot be a robust independent biomarker for ASD detection.The common signs of autism include not responding to social cues,not following the parent’s gaze,not pointing to objects,not following simple instructions,repetitive movements,unusual memory,inconsistent attention,and not maintaining eye contact [35].The visualization shows the strong correlation between the signs of autism specified by experts and those automatically detected by the proposed ASD detection system.

    Figure 6: (Continued)

    Figure 6: Data visualization on QBASD dataset (a) data visualization of questions Q4 and Q6(b) data visualization of questions Q8 and Q6 (c) data visualization of questions Q13 and Q14 (d)data visualization of questions Q15 and Q16(e)data visualization of questions Q21 and Q22(f)data visualization of questions Q25 and Q26(g)data visualization of Q5 and Q29(h)data visualization of Q18 and Q29(i)data visualization of question Q22 and Q29(j)data visualization of questions Q23 to Q29

    5 Conclusions

    In this research,we have experimentally studied the performance of the proposed automated detection tool for ASD detection.The proposed CADx selects the best features from the QBASD dataset using the ICA feature selection algorithm.The performance of the model built with LASSO as the feature selection method and LR classifier gives 95%accuracy for ASD detection.The evaluation of models with standard metrics shows that the ICA-based ASD detection algorithm provides 100%accuracy with LR as the classifier.The proposed CADx can detect ASD in children under five years,as the features included in the dataset are signs of ASD for children under five.The logistic regression as a classifier gives high accuracy as it can handle outliers.LR is suitable for linearly separable datasets.The model shows improved accuracy compared to the state-of-the-art methodologies.The exploratory data analysis phase shows the relations between vital symptoms of ASD identified in the study and collected as a dataset.The visualization of the dataset reveals that the features selected by the ICA algorithm are significant features for ASD detection at an early age.This research is novel as the dataset is a self-collected dataset from special schools for autism.The future direction of research is to study the neuroimages to detect autism.

    Acknowledgement:We sincerely thank Kaumaram Prashanthi Academy,a special education school in Tamil Nadu,India for their valuable support in data collection.We thank Parvathi Ravichandran,Coordinator,WVS Special School,Koundampalayam,Coimbatore,Tamil Nadu,India,for their suggestions in preparing the questionnaire and valuable support in data collection.We thank Dr.Sofia Devagnanam,founder and director of Liztoz Preschool and Litz Child development center,Coimbatore,Tamil Nadu,India for her valuable inputs in preparing the questionnaire for the data collection of QBASD dataset.

    Funding Statement:The authors extend their appreciation to the Deputyship for Research &Innovation,Ministry of Education in Saudi Arabia for funding this research work through the Project Number(IF2-PSAU-2022/01/22043).

    Author Contributions:Study conception and design: Shabana R.Ziyad;Data collection: Shabana R.Ziyad;Analysis and interpretation of results: Shabana R.Ziyad,I.A.Saeed,Liyakathunisa;Manuscript preparation:Shabana R.Ziyad,Liyakathunisa,I.A.Saeed;Review&editing:Shabana R.Ziyad,Eman Aljohani.

    Availability of Data and Materials:The data collected is a confidential dataset that was self-collected from special education schools.

    Ethics Approval:The study involves the responses from parents of ASD and non-ASD children studying in schools.The dataset used in this study related to Project Number IF2-PSAU-2022/01/22043,has received IRB approval from the Ethical Review and Approval Committee,Prince Sattam bin Abdulaziz,Al Kharj.The reference ID for approval is SCBR-085-2022 dated 16/11/2022.

    Conflicts of Interest:The authors declare that they have no conflicts of interest to report regarding the present study.

    人妻一区二区av| 精品人妻偷拍中文字幕| 欧美日韩精品成人综合77777| 七月丁香在线播放| 天美传媒精品一区二区| 韩国av在线不卡| 男人狂女人下面高潮的视频| 午夜免费观看性视频| 成人亚洲精品一区在线观看 | 国产精品人妻久久久久久| 成人亚洲精品一区在线观看 | 婷婷色麻豆天堂久久| 国产真实伦视频高清在线观看| 高清av免费在线| 91久久精品国产一区二区成人| 精品一区二区三区视频在线| tube8黄色片| 99久久九九国产精品国产免费| 国内少妇人妻偷人精品xxx网站| 国内揄拍国产精品人妻在线| 观看美女的网站| 下体分泌物呈黄色| 极品少妇高潮喷水抽搐| 国产高清不卡午夜福利| 亚洲欧美精品专区久久| 中国国产av一级| 热99国产精品久久久久久7| 特大巨黑吊av在线直播| 内射极品少妇av片p| 男女边摸边吃奶| 九九久久精品国产亚洲av麻豆| 搡老乐熟女国产| 亚洲精品影视一区二区三区av| a级毛色黄片| 国产成人精品一,二区| 天天一区二区日本电影三级| 亚洲精品成人久久久久久| 丰满乱子伦码专区| 黄色视频在线播放观看不卡| 80岁老熟妇乱子伦牲交| 国产精品一区二区在线观看99| 在线观看av片永久免费下载| 少妇的逼好多水| av卡一久久| 超碰97精品在线观看| 男女无遮挡免费网站观看| 欧美区成人在线视频| 26uuu在线亚洲综合色| 欧美性猛交╳xxx乱大交人| 国产片特级美女逼逼视频| 韩国高清视频一区二区三区| 亚洲丝袜综合中文字幕| 大陆偷拍与自拍| av国产免费在线观看| 久久人人爽av亚洲精品天堂 | 久久韩国三级中文字幕| a级毛色黄片| 亚洲在线观看片| 久久女婷五月综合色啪小说 | 亚洲欧美中文字幕日韩二区| 免费人成在线观看视频色| 国产有黄有色有爽视频| 国产精品秋霞免费鲁丝片| 国产综合精华液| 国产中年淑女户外野战色| 精品一区二区三卡| 国产乱人视频| 欧美性感艳星| 在线亚洲精品国产二区图片欧美 | 亚洲色图综合在线观看| 在线亚洲精品国产二区图片欧美 | 精品久久久久久电影网| 成人漫画全彩无遮挡| 人妻少妇偷人精品九色| 免费看不卡的av| 两个人的视频大全免费| 国产高清国产精品国产三级 | 久久精品国产a三级三级三级| 免费看光身美女| 日日啪夜夜撸| 在线观看美女被高潮喷水网站| 久久精品国产亚洲网站| 在线精品无人区一区二区三 | av在线天堂中文字幕| 男人爽女人下面视频在线观看| 国产精品麻豆人妻色哟哟久久| 欧美区成人在线视频| 日日撸夜夜添| 91精品伊人久久大香线蕉| 18禁动态无遮挡网站| 亚洲精品一二三| 日韩欧美 国产精品| 国产男女内射视频| 午夜爱爱视频在线播放| 中国美白少妇内射xxxbb| 男人舔奶头视频| 亚洲精品国产色婷婷电影| 久久久久国产精品人妻一区二区| 人妻一区二区av| 亚洲自拍偷在线| 一级二级三级毛片免费看| 国产乱来视频区| 80岁老熟妇乱子伦牲交| 深夜a级毛片| 综合色丁香网| 99久久人妻综合| 国产男女超爽视频在线观看| 搡女人真爽免费视频火全软件| 91久久精品国产一区二区成人| 亚洲人成网站在线播| 久久久久久久久久久免费av| 一级毛片 在线播放| 国产精品熟女久久久久浪| 一级爰片在线观看| 午夜福利在线在线| 日本av手机在线免费观看| 欧美成人精品欧美一级黄| 国产一区二区三区综合在线观看 | 狂野欧美激情性xxxx在线观看| 亚洲国产精品成人久久小说| 精品久久久久久久人妻蜜臀av| 久久久午夜欧美精品| 91久久精品国产一区二区三区| 国产淫片久久久久久久久| 久久精品熟女亚洲av麻豆精品| 久久久亚洲精品成人影院| av一本久久久久| 国产视频内射| 亚洲经典国产精华液单| 久久人人爽人人爽人人片va| 人妻系列 视频| 亚洲性久久影院| 少妇人妻一区二区三区视频| 欧美xxxx黑人xx丫x性爽| 国产一区有黄有色的免费视频| 永久网站在线| av在线天堂中文字幕| 欧美成人精品欧美一级黄| www.av在线官网国产| 少妇丰满av| 国产高清有码在线观看视频| 国产久久久一区二区三区| 欧美日韩综合久久久久久| 成人国产av品久久久| 亚洲色图av天堂| 少妇人妻久久综合中文| 亚洲最大成人手机在线| 日韩在线高清观看一区二区三区| 最新中文字幕久久久久| 欧美成人一区二区免费高清观看| 免费人成在线观看视频色| 日韩av不卡免费在线播放| 一级二级三级毛片免费看| 亚洲国产成人一精品久久久| 成人亚洲欧美一区二区av| 各种免费的搞黄视频| 丝袜脚勾引网站| 在线播放无遮挡| 亚洲成人中文字幕在线播放| 国产老妇伦熟女老妇高清| 成人午夜精彩视频在线观看| 少妇人妻一区二区三区视频| 亚洲国产精品成人综合色| 精品亚洲乱码少妇综合久久| 国产精品久久久久久久电影| 听说在线观看完整版免费高清| 女的被弄到高潮叫床怎么办| 大陆偷拍与自拍| 啦啦啦在线观看免费高清www| 最近2019中文字幕mv第一页| 国产探花极品一区二区| 免费不卡的大黄色大毛片视频在线观看| 亚洲精品国产av成人精品| 男人添女人高潮全过程视频| 欧美精品一区二区大全| 亚州av有码| 国产精品国产三级国产专区5o| 黄色一级大片看看| 草草在线视频免费看| 禁无遮挡网站| 国产午夜精品一二区理论片| 看非洲黑人一级黄片| 日韩免费高清中文字幕av| 国产色爽女视频免费观看| 日韩一本色道免费dvd| 午夜亚洲福利在线播放| 国产免费又黄又爽又色| 亚洲自拍偷在线| 欧美成人一区二区免费高清观看| 18+在线观看网站| 精品久久久久久久久亚洲| 一本久久精品| 在线精品无人区一区二区三 | 亚洲欧美清纯卡通| 午夜视频国产福利| 亚洲国产av新网站| 99热全是精品| 精品熟女少妇av免费看| 欧美zozozo另类| 观看免费一级毛片| 亚洲成人中文字幕在线播放| 青春草亚洲视频在线观看| 最近的中文字幕免费完整| 欧美激情国产日韩精品一区| 少妇的逼好多水| 久久精品久久久久久久性| 在线精品无人区一区二区三 | 日日摸夜夜添夜夜爱| videos熟女内射| 男女啪啪激烈高潮av片| 亚洲高清免费不卡视频| 日韩一区二区视频免费看| 2021天堂中文幕一二区在线观| av在线播放精品| 老师上课跳d突然被开到最大视频| 亚洲精品aⅴ在线观看| 久久久精品欧美日韩精品| 如何舔出高潮| 国产爱豆传媒在线观看| 国产综合精华液| 亚洲图色成人| 国产黄色免费在线视频| 欧美xxxx黑人xx丫x性爽| 精品久久久久久久人妻蜜臀av| 2021天堂中文幕一二区在线观| 91久久精品国产一区二区成人| videos熟女内射| 日产精品乱码卡一卡2卡三| 91精品伊人久久大香线蕉| 亚洲三级黄色毛片| 国产午夜精品久久久久久一区二区三区| 亚洲婷婷狠狠爱综合网| 亚洲无线观看免费| 日韩不卡一区二区三区视频在线| 亚洲欧美中文字幕日韩二区| .国产精品久久| 精品久久久久久久久av| 国产爽快片一区二区三区| 久久久久久九九精品二区国产| 久久精品久久精品一区二区三区| 精品一区二区三卡| 日本wwww免费看| 国产精品久久久久久精品电影小说 | 亚洲精品一区蜜桃| 日日摸夜夜添夜夜添av毛片| 一区二区三区精品91| 69av精品久久久久久| 国产色婷婷99| 美女主播在线视频| 国产免费视频播放在线视频| 精品久久久噜噜| 久久久亚洲精品成人影院| 自拍欧美九色日韩亚洲蝌蚪91 | 久久国内精品自在自线图片| 国产欧美亚洲国产| 在线观看三级黄色| 成人二区视频| 亚洲av日韩在线播放| 日本av手机在线免费观看| 99热这里只有是精品50| 亚洲成人精品中文字幕电影| 国产片特级美女逼逼视频| 久久精品国产亚洲av涩爱| 一级毛片 在线播放| 日韩 亚洲 欧美在线| 黄色日韩在线| 中国国产av一级| 男女那种视频在线观看| 欧美日韩精品成人综合77777| 日韩亚洲欧美综合| 国产白丝娇喘喷水9色精品| 少妇的逼好多水| 久久久久久久国产电影| 亚洲精品乱码久久久久久按摩| av卡一久久| 国产午夜精品一二区理论片| 午夜激情久久久久久久| 亚洲不卡免费看| 人妻夜夜爽99麻豆av| 校园人妻丝袜中文字幕| 中文字幕久久专区| 精品一区二区免费观看| 超碰97精品在线观看| 大话2 男鬼变身卡| 天天躁日日操中文字幕| av在线亚洲专区| av免费在线看不卡| 亚洲av不卡在线观看| 国产免费一级a男人的天堂| 69人妻影院| 欧美97在线视频| 精品人妻视频免费看| 成年人午夜在线观看视频| 亚洲性久久影院| 久久久国产一区二区| 欧美 日韩 精品 国产| 国产高清不卡午夜福利| 亚洲精品久久午夜乱码| 久久这里有精品视频免费| 亚洲av成人精品一二三区| 熟女人妻精品中文字幕| 国产av码专区亚洲av| 有码 亚洲区| 国产爽快片一区二区三区| 日韩人妻高清精品专区| 一区二区三区乱码不卡18| 80岁老熟妇乱子伦牲交| 自拍欧美九色日韩亚洲蝌蚪91 | 亚洲人与动物交配视频| 亚洲欧美一区二区三区黑人 | 神马国产精品三级电影在线观看| 在现免费观看毛片| 久久久久久久久久人人人人人人| 精品少妇久久久久久888优播| 欧美潮喷喷水| 成人国产av品久久久| 天堂中文最新版在线下载 | 可以在线观看毛片的网站| 婷婷色综合大香蕉| 久久精品夜色国产| 三级国产精品欧美在线观看| 国产成人a∨麻豆精品| 尾随美女入室| 2018国产大陆天天弄谢| 涩涩av久久男人的天堂| 搡女人真爽免费视频火全软件| 免费看av在线观看网站| 免费高清在线观看视频在线观看| 久久久久精品性色| 寂寞人妻少妇视频99o| 久久韩国三级中文字幕| 亚洲国产日韩一区二区| 国产高清国产精品国产三级 | 日韩欧美 国产精品| 97热精品久久久久久| 免费人成在线观看视频色| 精品久久久久久电影网| 婷婷色av中文字幕| 亚洲av国产av综合av卡| 午夜爱爱视频在线播放| 国产老妇女一区| 久久久久久久精品精品| 亚洲精品一二三| 国产精品人妻久久久影院| 欧美极品一区二区三区四区| 街头女战士在线观看网站| 少妇人妻精品综合一区二区| 国产免费一区二区三区四区乱码| 亚洲成色77777| 国产一区二区亚洲精品在线观看| 精品一区二区三卡| 国产黄a三级三级三级人| 国产日韩欧美在线精品| 国产男人的电影天堂91| 亚洲三级黄色毛片| 男女边吃奶边做爰视频| 大又大粗又爽又黄少妇毛片口| 精品一区二区免费观看| 久久久a久久爽久久v久久| 七月丁香在线播放| 国产成人精品一,二区| 一本—道久久a久久精品蜜桃钙片 精品乱码久久久久久99久播 | 亚洲一区二区三区欧美精品 | 久久久久精品久久久久真实原创| 久久精品国产亚洲av天美| 日韩精品有码人妻一区| 国产爽快片一区二区三区| 26uuu在线亚洲综合色| 久久久久久久大尺度免费视频| av免费观看日本| 91精品国产九色| 国产 一区精品| 亚洲精品中文字幕在线视频 | 亚洲性久久影院| 久久综合国产亚洲精品| 国产在线男女| 日韩大片免费观看网站| 又爽又黄a免费视频| 99久久精品热视频| 乱码一卡2卡4卡精品| 亚洲综合色惰| 国产成人精品一,二区| 国产一区亚洲一区在线观看| 中文字幕久久专区| 成人特级av手机在线观看| 另类亚洲欧美激情| 少妇裸体淫交视频免费看高清| 人妻一区二区av| 视频中文字幕在线观看| 久久久久国产网址| av国产久精品久网站免费入址| av福利片在线观看| 婷婷色综合www| 肉色欧美久久久久久久蜜桃 | 久久久亚洲精品成人影院| 亚洲成人久久爱视频| 中文天堂在线官网| 99热全是精品| 五月伊人婷婷丁香| 直男gayav资源| 99久久中文字幕三级久久日本| 老女人水多毛片| 一本色道久久久久久精品综合| 国产成人a区在线观看| 爱豆传媒免费全集在线观看| 久久这里有精品视频免费| 五月玫瑰六月丁香| 尤物成人国产欧美一区二区三区| 国产精品偷伦视频观看了| 国产精品熟女久久久久浪| 亚洲成人一二三区av| 婷婷色麻豆天堂久久| 啦啦啦啦在线视频资源| 午夜福利高清视频| 麻豆精品久久久久久蜜桃| av福利片在线观看| 久久午夜福利片| 少妇的逼水好多| 2018国产大陆天天弄谢| 国产一级毛片在线| 看非洲黑人一级黄片| 在现免费观看毛片| 另类亚洲欧美激情| 精品一区在线观看国产| 又爽又黄无遮挡网站| 中文欧美无线码| 国产片特级美女逼逼视频| 亚洲激情五月婷婷啪啪| 亚洲av免费高清在线观看| 成人一区二区视频在线观看| av在线天堂中文字幕| 久久99热6这里只有精品| 黄色配什么色好看| 国产人妻一区二区三区在| 69av精品久久久久久| 嘟嘟电影网在线观看| 岛国毛片在线播放| 一本—道久久a久久精品蜜桃钙片 精品乱码久久久久久99久播 | 国产精品.久久久| 中文欧美无线码| 一区二区三区免费毛片| 久久精品国产a三级三级三级| 欧美激情国产日韩精品一区| 亚洲av日韩在线播放| 性色av一级| 肉色欧美久久久久久久蜜桃 | 国产成人免费无遮挡视频| 午夜视频国产福利| 国产亚洲5aaaaa淫片| 麻豆国产97在线/欧美| 日韩一区二区三区影片| 国产白丝娇喘喷水9色精品| 久久人人爽av亚洲精品天堂 | 新久久久久国产一级毛片| 久久久久久伊人网av| 成人亚洲精品av一区二区| 久久久成人免费电影| 美女视频免费永久观看网站| 亚洲伊人久久精品综合| 亚洲精品久久久久久婷婷小说| 国内精品宾馆在线| 欧美xxⅹ黑人| 成年免费大片在线观看| 午夜福利在线观看免费完整高清在| 亚洲人与动物交配视频| 免费观看av网站的网址| 插阴视频在线观看视频| 18+在线观看网站| 欧美日韩精品成人综合77777| 中文字幕制服av| 人妻 亚洲 视频| 国产探花极品一区二区| 国产精品精品国产色婷婷| 青春草视频在线免费观看| 亚洲精品日韩av片在线观看| 国产69精品久久久久777片| 亚洲经典国产精华液单| 色视频在线一区二区三区| 久久久久久久久久人人人人人人| 观看美女的网站| 成人亚洲欧美一区二区av| 色视频在线一区二区三区| 欧美极品一区二区三区四区| 中文字幕av成人在线电影| 国产亚洲av嫩草精品影院| 国产白丝娇喘喷水9色精品| 国产亚洲精品久久久com| 精品一区二区三卡| 在线观看av片永久免费下载| av天堂中文字幕网| www.色视频.com| 九九爱精品视频在线观看| 久久国产乱子免费精品| 亚洲va在线va天堂va国产| 精品国产露脸久久av麻豆| 国产高清国产精品国产三级 | 久久久久国产精品人妻一区二区| 人体艺术视频欧美日本| 一级毛片电影观看| 99热这里只有是精品50| 日韩中字成人| 国产视频内射| 国产在线男女| 国内揄拍国产精品人妻在线| 亚洲精品456在线播放app| 99久久九九国产精品国产免费| av国产精品久久久久影院| 80岁老熟妇乱子伦牲交| 久久人人爽人人爽人人片va| 免费看光身美女| 嫩草影院新地址| 永久网站在线| 一级av片app| 亚洲熟女精品中文字幕| 国产色爽女视频免费观看| av在线天堂中文字幕| 国产精品不卡视频一区二区| 大片免费播放器 马上看| 伦理电影大哥的女人| 丝袜脚勾引网站| 午夜福利网站1000一区二区三区| 毛片一级片免费看久久久久| 中文天堂在线官网| 乱系列少妇在线播放| 国产午夜精品久久久久久一区二区三区| 亚洲高清免费不卡视频| 亚洲av欧美aⅴ国产| 男人爽女人下面视频在线观看| 亚洲精品成人久久久久久| 久久精品久久久久久久性| 丰满人妻一区二区三区视频av| 99久久人妻综合| 免费播放大片免费观看视频在线观看| 男人添女人高潮全过程视频| 啦啦啦在线观看免费高清www| 高清视频免费观看一区二区| av在线天堂中文字幕| 九九在线视频观看精品| 久久久久九九精品影院| 神马国产精品三级电影在线观看| 建设人人有责人人尽责人人享有的 | 国产免费一区二区三区四区乱码| 久久久亚洲精品成人影院| 少妇人妻精品综合一区二区| 一个人看的www免费观看视频| 狂野欧美激情性bbbbbb| 久久女婷五月综合色啪小说 | 成人欧美大片| 亚洲怡红院男人天堂| 人人妻人人看人人澡| 一级a做视频免费观看| 九草在线视频观看| 女人十人毛片免费观看3o分钟| 身体一侧抽搐| 日韩 亚洲 欧美在线| 精品一区二区免费观看| 国产日韩欧美亚洲二区| 在线观看国产h片| 免费看不卡的av| 大片电影免费在线观看免费| 欧美高清成人免费视频www| 丰满少妇做爰视频| 国产老妇女一区| 欧美3d第一页| 日韩欧美精品v在线| 韩国av在线不卡| 18禁裸乳无遮挡动漫免费视频 | 国产成人福利小说| 国产大屁股一区二区在线视频| 中国国产av一级| 国产成人freesex在线| 一本一本综合久久| 边亲边吃奶的免费视频| 国产爽快片一区二区三区| 亚洲欧美成人综合另类久久久| 亚洲人成网站在线观看播放| 青青草视频在线视频观看| 欧美三级亚洲精品| 在线 av 中文字幕| 亚洲欧美成人综合另类久久久| 日本三级黄在线观看| 国产成人91sexporn| 亚洲美女搞黄在线观看| 国产亚洲最大av| 特级一级黄色大片| 人妻少妇偷人精品九色| 蜜臀久久99精品久久宅男| 免费黄频网站在线观看国产| 国产黄a三级三级三级人| 在线a可以看的网站| 国产精品精品国产色婷婷| 欧美日韩一区二区视频在线观看视频在线 | 肉色欧美久久久久久久蜜桃 | 日本-黄色视频高清免费观看| 国模一区二区三区四区视频| 深夜a级毛片| a级毛色黄片| 久久久国产一区二区| 午夜精品国产一区二区电影 | 男女边吃奶边做爰视频| 免费av不卡在线播放| 18禁在线无遮挡免费观看视频| 国产极品天堂在线| 建设人人有责人人尽责人人享有的 | 乱码一卡2卡4卡精品| 99九九线精品视频在线观看视频| 免费大片黄手机在线观看| 少妇熟女欧美另类| 一本—道久久a久久精品蜜桃钙片 精品乱码久久久久久99久播 | 男女啪啪激烈高潮av片| 精品人妻一区二区三区麻豆| 91在线精品国自产拍蜜月| 人妻制服诱惑在线中文字幕| 久久人人爽人人片av| 国产成年人精品一区二区|