• <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 ?

    Cloud-Based Diabetes Decision Support System Using Machine Learning Fusion

    2021-12-14 10:30:36ShabibAftabSaadAlanaziMunirAhmadMuhammadAdnanKhanAreejFatimaandNouhSabriElmitwally
    Computers Materials&Continua 2021年7期

    Shabib Aftab,Saad Alanazi,Munir Ahmad,Muhammad Adnan Khan,Areej Fatima and Nouh Sabri Elmitwally,6

    1School of Computer Science,National College of Business Administration&Economics,Lahore,54000,Pakistan

    2Department of Computer Science,Virtual University of Pakistan,Lahore,54000,Pakistan

    3College of Computer and Information Sciences,Jouf University,Sakaka,72341,Saudi Arabia

    4Riphah School of Computing&Innovation,Riphah International University,Lahore Campus,Lahore,54000,Pakistan

    5Department of Computer Science,Lahore Garrison University,Lahore,54000,Pakistan

    6Department of Computer Science,Faculty of Computers and Artifcial Intelligence,Cairo University,12613,Egypt

    Abstract: Diabetes mellitus, generally known as diabetes, is one of the most common diseases worldwide.It is a metabolic disease characterized by insulin defciency,or glucose(blood sugar)levels that exceed 200 mg/dL(11.1 ml/L)for prolonged periods,and may lead to death if left uncontrolled by medication or insulin injections.Diabetes is categorized into two main types—type 1 and type 2—both of which feature glucose levels above “normal,” defned as 140 mg/dL.Diabetes is triggered by malfunction of the pancreas, which releases insulin, a natural hormone responsible for controlling glucose levels in blood cells.Diagnosis and comprehensive analysis of this potentially fatal disease necessitate application of techniques with minimal rates of error.The primary purpose of this research study is to assess the potential role of machine learning in predicting a person’s risk of developing diabetes.Historically, research has supported the use of various machine algorithms,such as na?ve Bayes, decision trees, and artifcial neural networks, for early diagnosis of diabetes.However, to achieve maximum accuracy and minimal error in diagnostic predictions, there remains an immense need for further research and innovation to improve the machine-learning tools and techniques available to healthcare professionals.Therefore, in this paper, we propose a novel cloud-based machine-learning fusion technique involving synthesis of three machine algorithms and use of fuzzy systems for collective generation of highly accurate fnal decisions regarding early diagnosis of diabetes.

    Keywords: Machine learning fusion; artifcial neural network; decision trees; na?ve Bayes; diabetes prediction

    1 Introduction

    Diabetes mellitus, widely known as diabetes, is an increasingly common physiological health issue.A patient with diabetes, or a diabetic, suffers from a critical shortage of insulin, resulting in an inability to adequately process glucose (sugar) [1].Diabetes is generally classifed into two types:type 1 and type 2.Type-1 diabetes is characterized by insulin dependency, while type-2 diabetes is characterized by insulin defciency.Insulin is one of the vital hormones produced by the pancreas, the organ responsible for regulating glucose (blood sugar) levels in the human body.The primary underlying causes of diabetes are an imbalanced diet (i.e., one high in sugary foods), obesity, and genetic inheritance.Recent industrial and technological advancements have signifcantly affected the average human lifestyle, leading to the higher standard of living and accompanying decrease in physical activity commonly observed in developed countries.Accordingly, rates of diabetes have increased, and clinical analysis and effective diagnosis of diabetes have become key subjects of healthcare studies.Traditionally, diabetes has been diagnosed via clinical tests of glucose tolerance levels in patients [2].Like many other metabolic diseases, diabetes is associated with severe complications such as heart failure, kidney problems, and eyesight issues including complete blindness [3].An alarming report issued by the Diabetes Research Centre stated that the prevalence of diabetes has increased at a rate of 7% annually and doubled globally during the last decade, with more than 200 million now diagnosed.Research studies have indicated that 8% of the population aged 25–65 suffer from ailments linked to pancreatic dysfunction, and in a sample of 2.2 million of such patients, 17% were adults; most of these patients have high risk of developing diabetes in the near future [4].Diabetes can be fatal and otherwise can lead to severe,often irreparable damage to multiple organs.There is an immense need for tools and technologies enabling effcient, accurate investigation and diagnosis to support the decision making of health experts in managing this disease.

    Recent studies indicate that accurate and timely diagnosis may prevent 80% of complications in patients with type-2 diabetes.Accurate and timely diagnosis provides a solid basis for effective treatment, helping to minimize cost of treatment and other diffculties for patients [5].These are the key success factors for prevention of diabetes complications and development of effective treatment strategies.Healthcare professionals can implement such strategies to reduce long-term damage caused by this disease.Due to its signifcant advantages, early detection has become a top priority among healthcare prognosis personnel.Notably, detection of type-2 diabetes requires a higher level of medical expertise, as this disease is more complex compared to type-1 diabetes.One of the most promising new methods for accurate early diagnosis is the use of an artifcial neural network (ANN).ANN is one of a number of recently developed machine-learning methods being implemented to predict disease earlier and more accurately.According to M.S.Shanker in his research paper “Using neural networks to predict the onset of diabetes mellitus” [6], ANN is considered a more suitable approach to early diagnosis than other machine-learning methods,particularly when one considers the factor of network topology.However, parameter optimization presents a major issue when utilizing ANN.Multi-layer perceptron (MLP), a subset of Deep neural networks (DNN), has offered effective resolutions to this problem.DNN are increasingly recommended to support diagnostic processes for diverse diseases [7], as DNN facilitate disease identifcation and diagnosis while minimizing human error [8].When utilizing neural networks for diagnosis, it is vital to attain a high level of accuracy, which is achieved via suffcient training and testing on patient datasets.DNN have shown particular promise for achieving maximum accuracy and minimal error through training and testing on datasets.

    Machine-learning models are commonly used for diabetes prognostication and provide better results.Among machine-learning models, one of the most widely used methods for results classifcation is the Decision tree (DT).In machine-learning methods for disease diagnosis, the results of multiple DT can be synthesized to generate a random forest (RF) that yields a single collective fnal result—that is, a fnal diagnostic decision.The authors used RF in parallel with Principal component analysis (PCA).RF approximately obtains 80% accuracy.Historically,the primary objective of diabetes diagnosis was simply to help control the development of the disease.With support from machine learning, early diagnosis has become possible.High-risk individuals may now take precautionary measures to avoid consequences of the disease for as long as possible.Successful early diagnosis largely depends on accurate selection of classifers and related features.Researchers have been experimenting with various machine-learning methods,testing different algorithms with the aim of achieving superior rates of prediction accuracy.Previously explored algorithms include support-vector machines (SVM), J48, na?ve Bayes, and DT;studies of these algorithms have proven that machine-learning methods achieve superior diagnostic results [9].The real strength of these algorithms lies in their fexibility to integrate data from varying sources [10].

    In this study, we propose a new DNN approach for generating highly accurate predictions of type-2 diabetes.Our approach utilizes a cloud-based decision support system for early identifcation of diabetic patients.The proposed system uses real-time patient data as input to predict whether a particular patient has diabetes.We apply three popular machine-learning algorithms and a fuzzy system to achieve fnal diagnostic results with accuracy rates higher than those achieved in similar past studies.

    2 Related Research

    Researchers in [11] presented a hybrid framework for detection of type-2 diabetes that uses two techniques:K-means and C4.5.They used the clustering algorithm to identify class labels and C4.5 for classifcation.Their experiment on the Pima Indians diabetes dataset (PIDD) yielded a 92.38% accuracy rate.Researchers in [12] proposed a model using fuzzy C-means clustering techniques to diagnose type-2 diabetes.They used 768 records with nine features in their experiment, achieving 94.3% accuracy.In [13], researchers performed a comparative analysis of various classifcation and clustering techniques for diabetes diagnosis.They conducted tests to evaluate the performance of applied data-mining techniques.Their results indicated that the J48 classifer outperformed all other techniques in Weka with an accuracy rate of 81.33%.Researchers in [14]proposed a framework to diagnose diabetes using DT along with a fuzzy decision boundary system.The proposed framework achieved an accuracy of 75.8%.Researchers in [15] presented a system to detect diabetes using generalized discriminant analysis and least-squares SVM.Their proposed system demonstrated 82.50% accuracy.Researchers in [16] presented a diabetes detection system using a modifed artifcial bee colony (ABC) optimization technique with fuzzy rules.Their proposed system showed an accuracy rate of 82.68%.Researchers in [17] proposed a model for diabetes detection that integrated ANN and SVM using a stacked ensemble technique.They applied their model to the PIDD and achieved an accuracy rate of 88.04%.In [18], researchers presented an ensemble classifcation model based on data streams.The proposed model was able to perform classifcation tasks in a data-streaming environment.Researchers in [19] also presented an ensemble classifcation model; theirs was designed to detect diabetic retinopathy.They used fuzzy RF and applied Dominance-based Rough Sets Theory.Their experiment used the SRJUH dataset and showed an accuracy rate of 77%.Researchers in [20] presented a heterogeneous ensemble classifcation model that included a fuzzy rule inference engine to tackle the issue of uncertainty in the results of base classifers.

    3 Materials and Methods

    Early diagnosis of type-2 diabetes can offer patients the opportunity to improve their lifestyles and dietary habits.Moreover, early detection can guide patients to start taking proper medication before the disease worsens.In our study, we present a method for early detection of diabetes that uses a cloud-based intelligent framework empowered by supervised machine-learning techniques and fuzzy systems as shown in Fig.1.Our framework consists of two layers:Training and testing.Each layer further consists of multiple stages.

    Figure 1:CBD-DSS-FM using machine-learning fusion

    The training layer begins with the selection of a proper dataset.In the present study, we selected a pre-labeled dataset of diabetes patients [21] for the implementation of our proposed framework.This dataset consists of 15,000 instances and a total of 10 features, of which nine features are independent and one, the output class, is dependent.The pre-processing layer of our proposed framework involves two stages:1) Data cleaning and normalization and 2) data splitting.Data cleaning removes missing values using the mean imputation method, while normalization brings the values of all features into a certain range.Both activities help the classifcation process achieve higher performance/accuracy.After data cleaning and normalization, the dataset is divided into training data and test data at a ratio of 70:30 on the basis of class split.

    After pre-processing is the classifcation process, which consists of training of three widelyused supervised classifcation techniques:ANN, DT, and na?ve Bayes (NB).This layer receives input from the training set and test set in the pre-processing stage and provides three prediction results for the next stage.All three classifcation algorithms must be optimized to achieve maximum accuracy.During ANN confguration, we used one hidden layer with 10 neurons and backpropagation technique to tune the weights.We used a multi-layer perceptron with at least one hidden layer besides the input and output layers.The steps involved in backpropagation are as follows:initialization of weight, feed forward, backpropagation of error, and updating of weight and bias.Every neuron present in the hidden layer has an activation function such asf(x)=Sigmoid(x).The sigmoid function for input and the hidden layer of the proposed BPNN can be written as

    Input derived from the output layer is

    The output layer activation function is

    Backpropagation error is represented by the above equation, where,τkandppkrepresent the desired output and estimated output, respectively.In Eq.(6), rate of change in weight for output,the layer is written as

    After applying the chain rule method, the above equation can be stated as

    By substituting the values in Eq.(7), the value of weight changed can be obtained as presented in Eq.(8).

    where,

    Then, we apply the chain rule method for the updating of weights between input and hidden layers:

    where?represents the constant:

    After simplifcation, the above equation can be stated as

    where

    Eq.(10) is used for updating the weights between hidden layers and output.

    Eq.(11) is used for updating the weights between the input and hidden layer.

    In DT, we used three optimizers one by one:Random search, Bayesian optimization, and grid search.Bayesian optimization performed well and was hence selected for this framework.

    GINI index is

    and information gain is

    In machine learning, information gain is used to defne a desired sequence of attributes for investigation of the most rapidly reduced state ofS.DT depicts how each stage depends on the outcomes of the analysis of the last attribute; applied in the area of machine learning, this is known as decision-tree learning.An element with high mutual information must be preferred to other attributes.

    Here,f(z)serves to minimize error rate, or Root mean squared error (RMSE), assessed on the validation set.zcan take on any value from domainZ, andz?is the set of hyper-parameters that relent the lowest value of the score.In simple terms, we aimed to fnd the model hyperparameters that would deliver the best score on the validation set metric.This model is known as a “surrogate,” which is represented asp(z|n), for the objective function:

    We intended to optimize expected improvement with respect to proposed set of hyperparametersn.Here,z?is an edge value of the objective function, whereaszdepicts the actual value of the function using hyper-parametersn, andp(z|n)is the surrogate probability model stating the probability ofzgivenn.This suggests the best hyper-parameters under the functionp(z|n).

    The hyper-parameters are not expected to produce any improvement ifp(z|n)is zero everywhere thatz

    Thep(n|z)function is expressed as

    wherel(n)is the distribution of the hyper-parameters when the score is lower than the thresholdz?, andg(n)is the distribution when the score is higher thanz?.

    z?is the minimum observed true objective function score, whereaszstands for new scores.To maximize the expected improvement result under the Gaussian Process model, the new scorezmust be less than the current minimum score (z

    Our rationale for this equation is that we have two different distributions for the hyperparameters:the frst represents where the value of the objective function is less than the threshold,l(n), and the other where the value of the objective function is greater than the threshold,g(n).

    To increase expected improvement, points with high probability underl(n)and low probability underg(n)might be chosen as the next hyper-parameter.

    In NB, three kernel types are used:Box, Gaussian, and Triangle.

    Probability of OutCome|Evidence(Posterior Probability)

    The traditional NB classifer estimates probabilities by an approximation of the data through a function, such as a Gaussian distribution:

    whereμtrepresent the mean of the values of attributeStaveraged over training points with class labelz, andσzrepresents the standard deviation.The one-parameter Box–Cox transformations are defned as

    and the two-parameter Box–Cox transformations as

    After particular optimization, each optimized model is stored in the cloud.The next stage of the training layer in our proposed framework deals with the creation and implementation of fuzzy logic on the results of optimized classifcation algorithms as shown in Fig.2.This layer receives the results of ANN, DT, and NB and generates the output using fuzzy rules as shown in Figs.3 and 4, which is again stored in the cloud.

    Conditional orif-thenstatements are used to make fuzzy logic.On the basis of these statements, fuzzy rules are constructed as follows:

    IF (NeuralNetwork is yes and Na?veBayes is yes and DecisionTree is yes) THEN (Diabetes is yes).

    IF (NeuralNetwork is yes and Na?veBayes is yes and DecisionTree is no) THEN (Diabetes is yes).

    IF (NeuralNetwork is yes and Na?veBayes is no and DecisionTree is yes) THEN (Diabetes is yes).

    IF (NeuralNetwork is no and Na?veBayes is yes and DecisionTree is yes) THEN (Diabetes is yes).

    IF (NeuralNetwork is no and Na?veBayes is no and DecisionTree is also no) THEN (Diabetes is no).

    IF (NeuralNetwork is yes and Na?veBayes is no and DecisionTree is no) THEN (Diabetes is no).

    IF (NeuralNetwork is no and Na?veBayes is no and DecisionTree is yes) THEN (Diabetes is no).

    IF (NeuralNetwork is no and Na?veBayes is yes and DecisionTree is no) THEN (Diabetes is no).

    In formulating the rules, it is evident that if any two of the three supervised classifcation techniques aretrue, then diabetes istrue; otherwise, diabetes isfalse.

    Figure 2:Proposed fused ML rule surface

    Figure 3:Proposed fused ML result with diabetes (yes)

    Figure 4:Proposed fused ML result with diabetes (no)

    Fig.2 shows the proposed fused ML rule surface of diabetes with respect to the neural network and na?ve Bayes results.If both neural network and naive Bayes solutions predict no diabetes, then the resultant fused ML also predicts no diabetes; otherwise, the fused ML predicts diabetes.

    Fig.3 shows that if the neural network diagnoses no diabetes and remaining algorithms—na?ve Bayes and decision tree—both diagnose diabetes, then the fused ML diagnoses the patient with diabetes.

    Fig.4 shows that if all three algorithms—neural network, na?ve Bayes, and decision tree—diagnose no diabetes, then the fused ML also diagnoses no diabetes.

    The second layer of the proposed framework deals with the real-time classifcation of diabetic patients.The real-time patient data can be given as input to the proposed machine-learning fuzzed model, and appointments can be made on the basis of the results.If any patient is predicted to be a diabetic, then he or she is appointed to an early slot on an emergency basis; meanwhile, if the patient is predicted to be a non-diabetic, then he or she can be given an appointment following the regular schedule.

    4 Results and Discussion

    To implement the proposed framework, we used a dataset [21] consisting of 10 features and 15,000 instances as shown in Tab.1.The frst nine features were independent features used as inputs to calculate and predict the tenth feature, the output class indicating whether the particular patient is suffering from diabetes or not.If the value of this feature is 1, the patient is diabetic,and if the value is 0, the patient is non-diabetic.

    Table 1:Dataset parameters

    We divided the dataset into two parts, 70% training data (10,500) and 30% test data (4,500).We performed the pre-processing activities of cleaning and normalization on the dataset prior to classifcation.For classifcation of the dataset, we used three machine learning algorithms:ANN,DT, and NB.We optimized these techniques iteratively until we achieved maximum performance.We applied various statistical measures to assess the performance of the classifcation techniques as shown below.

    whereRO0,RO1,EO0andEO1represent the predicted positive output, predicted negative output,expected positive output, and expected negative output, respectively.

    First, we used ANN to classify the dataset.We used one hidden layer consisting of nine neurons while designing the structure of the neural network.We used 70% of the dataset, consisting of 10,500 records, for training the model and the remaining 30% of the dataset, consisting of 4,500 records, for testing.Of the 10,500 records reserved for training, 7,000 were negative and 3,500 were positive.During the training process with ANN, 6,801 records were classifed as negative and 3,273 were classifed as positive.After comparing the expected results with the output results shown in Tab.2, we achieved 96% accuracy with a 4% miss rate.In testing with ANN,2,831 records were classifed as negative and 1,285 were classifed as positive (Tab.2).The accuracy rate of ANN in the testing stage was 91.5% and the miss rate was 8.5%.

    Table 2:Artifcial neural network (ANN)

    During the training process with DT, 6,801 records were classifed as negative and 3,273 were classifed as positive.After comparison of the expected negative and positive records with the output results of the training process with DT (Tab.3), we achieved an accuracy rate of 95.9% and miss rate of 4.1%.During the testing process with DT, 2,898 records were classifed as negative while 1,404 were classifed as positive (Tab.3).During our comparison of expected output with output of the testing process with DT, we achieved an accuracy rate of 94.9% and miss rate of 5.1%.

    Table 3:Decision tree (DT)

    During training with NB, 6,647 records were classifed as negative and 3,109 were classifed as positive.After comparing the achieved output of NB in the training stage with the expected output (Tab.4), we achieved 92.91% accuracy and a miss rate of 7.09%.During the testing process, we used 4,500 records (30% of the dataset) for validation.Of these records, 3,000 were negative and 1,500 records were positive.The NB classifed 2,828 records as negative and 1,348 as positive.After comparison with the expected output (Tab.4), the proposed model achieved an accuracy rate of 92.8% and miss rate of 7.2%.

    Table 4:Na?ve based (NB)

    Finally, we inputted all of the records of test data into the fuzzy system along with the output class for the fnal decision.The fuzzy system classifed 2,903 records as negative and 1,380 as positive (Tab.5).During comparison of expected output and fuzzy system output, we achieved 95.2% accuracy with a miss rate of 4.8%.

    Table 5:FM proposed (testing)

    Table 6:Detailed results of proposed decision support system

    Table 7:Performance analysis of proposed decision support system

    Tab.6 presents detailed results of the three classifcation techniques along with those of our proposed model (FM).In testing, the fuzzy model outperformed other algorithms in all applied accuracy measures.

    Tab.7 refects the detailed results of our proposed fused model along with input and output.We can observe that the real-time input parameters of the patients were given to the decision support system, where the three classifers individually predicted diabetes diagnosis and the fuzzy inference system then formulated the fnal result.

    Tab.8 displays the accuracy and error rates achieved by our proposed framework in comparison with other algorithms previously applied in diabetes diagnosis.The results obtained from the fused model in the proposed framework are compared with backpropagation [9], Bayesian regulation [22], ANN [23], GRNN [24], PNN [25], DELM [26], NB [1], J48 [1], and RBF [1].The data indicates that our proposed FM framework signifcantly outperformed the algorithms used in previous research.

    Table 8:Accuracy comparison of decision support systems

    5 Conclusion

    Early diagnosis of diabetes using machine-learning techniques is a challenging task.In this paper, we proposed a novel cloud-based decision-support system for diabetes prediction using a fused machine-learning technique.Our proposed system integrates the classifcation accuracy of three supervised machine-learning techniques (ANN, NB, and DT) with a fuzzy inference system to generate accurate predictions.Our system consists of two layers:training and testing.The training layer initiates with data pre-processing activities—data cleaning and normalization—and is followed by data splitting for classifcation.In our study, we divided the dataset for training and testing at a ratio of 70:30 to optimize classifcation techniques and yield more accurate results in the validation data.After pre-processing, we executed the classifcation process, which involved training of the three classifcation techniques (ANN, NB, and DT) followed by validation on our selected dataset.We optimized these techniques until maximum accuracy was achieved.Finally,using a fuzzy system, we synthesized the three prediction results from the three classifcation techniques to generate the fnal prediction output.In our study, our proposed system achieved an accuracy rate of 95.2%, outperforming previously applied machine-learning techniques for diabetes diagnosis.

    Acknowledgement:The authors thank their families and colleagues for their continued support.

    Funding Statement:The author(s) received no specifc funding for this study.

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

    一本久久精品| 热99re8久久精品国产| 极品人妻少妇av视频| 久久人妻av系列| 国产精品熟女久久久久浪| 韩国精品一区二区三区| 久久久水蜜桃国产精品网| 丝袜人妻中文字幕| 一级毛片电影观看| 少妇 在线观看| av在线播放免费不卡| 香蕉丝袜av| 国产极品粉嫩免费观看在线| 日日夜夜操网爽| 黄网站色视频无遮挡免费观看| 国产不卡一卡二| 免费观看人在逋| 人人妻人人澡人人看| 91大片在线观看| 不卡av一区二区三区| av天堂在线播放| 国产午夜精品久久久久久| 嫁个100分男人电影在线观看| 法律面前人人平等表现在哪些方面| 欧美人与性动交α欧美软件| 午夜福利欧美成人| 夜夜爽天天搞| 一级毛片电影观看| 丰满饥渴人妻一区二区三| 久久精品国产亚洲av香蕉五月 | 天天操日日干夜夜撸| 在线观看免费午夜福利视频| 免费一级毛片在线播放高清视频 | 中文字幕人妻熟女乱码| 久久青草综合色| 激情视频va一区二区三区| 国产精品久久久人人做人人爽| 久久99一区二区三区| 亚洲成国产人片在线观看| 亚洲av片天天在线观看| 在线观看人妻少妇| 大陆偷拍与自拍| 日本一区二区免费在线视频| 91精品国产国语对白视频| 老司机靠b影院| 十八禁网站网址无遮挡| 久久九九热精品免费| 制服人妻中文乱码| 国产亚洲一区二区精品| 19禁男女啪啪无遮挡网站| 日本av免费视频播放| 久久国产精品人妻蜜桃| 12—13女人毛片做爰片一| 天堂动漫精品| 人人妻人人澡人人看| 成人精品一区二区免费| 国产精品麻豆人妻色哟哟久久| 精品国产一区二区三区久久久樱花| 操出白浆在线播放| 中文字幕高清在线视频| 乱人伦中国视频| 露出奶头的视频| 一进一出抽搐动态| 天天躁日日躁夜夜躁夜夜| 99国产极品粉嫩在线观看| 成人亚洲精品一区在线观看| 日本vs欧美在线观看视频| 9191精品国产免费久久| 国产日韩欧美在线精品| 亚洲七黄色美女视频| 少妇的丰满在线观看| 夜夜骑夜夜射夜夜干| 色在线成人网| 国产精品久久久久久人妻精品电影 | 9色porny在线观看| 国产一区二区三区视频了| 人妻一区二区av| 中文欧美无线码| 国产一区二区 视频在线| 亚洲欧美日韩另类电影网站| av视频免费观看在线观看| 69av精品久久久久久 | 久久av网站| 免费观看a级毛片全部| 国产成人免费无遮挡视频| 日韩欧美国产一区二区入口| 国产免费福利视频在线观看| 久久久精品94久久精品| 蜜桃国产av成人99| 久久精品人人爽人人爽视色| 免费不卡黄色视频| 夜夜骑夜夜射夜夜干| 无遮挡黄片免费观看| 国内毛片毛片毛片毛片毛片| 亚洲国产中文字幕在线视频| 亚洲欧美激情在线| 成人免费观看视频高清| 老司机午夜福利在线观看视频 | 国产一区二区激情短视频| 一区在线观看完整版| 黄色毛片三级朝国网站| 国产精品麻豆人妻色哟哟久久| 亚洲国产精品一区二区三区在线| 搡老乐熟女国产| 欧美日韩av久久| 国产日韩欧美亚洲二区| 在线十欧美十亚洲十日本专区| 伦理电影免费视频| 国产av国产精品国产| 老司机亚洲免费影院| 国产精品久久久久久精品古装| 少妇粗大呻吟视频| 80岁老熟妇乱子伦牲交| 国产精品二区激情视频| 欧美精品人与动牲交sv欧美| 国产国语露脸激情在线看| 两人在一起打扑克的视频| 黄色丝袜av网址大全| 咕卡用的链子| 日韩中文字幕欧美一区二区| 在线观看人妻少妇| 日本黄色日本黄色录像| 亚洲精品乱久久久久久| 国产亚洲一区二区精品| 久久人妻福利社区极品人妻图片| 午夜成年电影在线免费观看| 欧美亚洲日本最大视频资源| 日韩欧美免费精品| 国产日韩一区二区三区精品不卡| 99国产极品粉嫩在线观看| 久久精品国产亚洲av高清一级| 亚洲欧洲日产国产| 国产欧美日韩一区二区三区在线| 男女下面插进去视频免费观看| www.熟女人妻精品国产| 成人国产一区最新在线观看| 交换朋友夫妻互换小说| 亚洲 欧美一区二区三区| 老熟女久久久| 一级片免费观看大全| 久久热在线av| 丁香六月天网| 大型av网站在线播放| 亚洲精品乱久久久久久| 99九九在线精品视频| 老司机靠b影院| 国产不卡av网站在线观看| 中文字幕人妻丝袜制服| 国产福利在线免费观看视频| 麻豆国产av国片精品| 老司机福利观看| 国产1区2区3区精品| 欧美精品亚洲一区二区| 妹子高潮喷水视频| 在线观看一区二区三区激情| 亚洲精品国产精品久久久不卡| 日本a在线网址| 欧美日韩视频精品一区| 国产高清国产精品国产三级| 亚洲精品久久午夜乱码| 国产日韩欧美亚洲二区| 国产黄频视频在线观看| 国产精品久久久久成人av| 亚洲三区欧美一区| 美女高潮喷水抽搐中文字幕| 少妇的丰满在线观看| 在线观看免费视频日本深夜| 香蕉丝袜av| 成人影院久久| 国产精品麻豆人妻色哟哟久久| 免费看十八禁软件| 搡老熟女国产l中国老女人| 久久狼人影院| 国产成人av教育| 欧美激情久久久久久爽电影 | 一级片'在线观看视频| 一边摸一边做爽爽视频免费| 天堂中文最新版在线下载| av一本久久久久| 大型黄色视频在线免费观看| 1024视频免费在线观看| 少妇猛男粗大的猛烈进出视频| 99re在线观看精品视频| 香蕉国产在线看| 午夜日韩欧美国产| 亚洲成人国产一区在线观看| 国产精品秋霞免费鲁丝片| 国产老妇伦熟女老妇高清| 国产伦理片在线播放av一区| 日韩中文字幕视频在线看片| 国产高清视频在线播放一区| a级毛片在线看网站| 亚洲 欧美一区二区三区| 在线观看一区二区三区激情| 两性夫妻黄色片| 又黄又粗又硬又大视频| 国产不卡av网站在线观看| 日本wwww免费看| 手机成人av网站| 中文字幕人妻丝袜一区二区| av又黄又爽大尺度在线免费看| 精品一区二区三区视频在线观看免费 | 午夜日韩欧美国产| 天堂动漫精品| 亚洲国产欧美在线一区| 超碰97精品在线观看| 欧美日韩亚洲综合一区二区三区_| 国产精品一区二区在线不卡| 国产日韩欧美在线精品| 欧美日韩视频精品一区| av免费在线观看网站| 亚洲熟妇熟女久久| 老司机福利观看| 12—13女人毛片做爰片一| 免费高清在线观看日韩| 9色porny在线观看| 人妻 亚洲 视频| 亚洲国产av影院在线观看| 国产精品一区二区精品视频观看| av有码第一页| svipshipincom国产片| 日韩免费av在线播放| 久久久久久久久久久久大奶| 啦啦啦视频在线资源免费观看| 在线观看免费视频网站a站| 午夜精品久久久久久毛片777| 不卡av一区二区三区| 99在线人妻在线中文字幕 | 欧美日韩av久久| 国产亚洲欧美在线一区二区| 天堂8中文在线网| 啦啦啦免费观看视频1| av福利片在线| 中文亚洲av片在线观看爽 | 一本色道久久久久久精品综合| 亚洲成人免费电影在线观看| 国产成人精品无人区| 99精品在免费线老司机午夜| 国产欧美日韩一区二区三| 亚洲国产av影院在线观看| 亚洲欧美激情在线| 老鸭窝网址在线观看| 午夜91福利影院| 欧美变态另类bdsm刘玥| 一本色道久久久久久精品综合| 国产一区二区三区视频了| 日本a在线网址| 啦啦啦视频在线资源免费观看| 久热这里只有精品99| 99香蕉大伊视频| 国产精品98久久久久久宅男小说| 少妇裸体淫交视频免费看高清 | 成人黄色视频免费在线看| 欧美性长视频在线观看| 国产三级黄色录像| 人人澡人人妻人| 国产又爽黄色视频| 日本撒尿小便嘘嘘汇集6| 精品国产超薄肉色丝袜足j| 日本a在线网址| 少妇猛男粗大的猛烈进出视频| 蜜桃在线观看..| 亚洲免费av在线视频| 精品一区二区三区视频在线观看免费 | 女同久久另类99精品国产91| 亚洲黑人精品在线| 一本大道久久a久久精品| 19禁男女啪啪无遮挡网站| 国产片内射在线| 久久久国产欧美日韩av| aaaaa片日本免费| 精品一区二区三区视频在线观看免费 | 黄色成人免费大全| 天堂中文最新版在线下载| 黄色毛片三级朝国网站| 老汉色av国产亚洲站长工具| 免费av中文字幕在线| 女人高潮潮喷娇喘18禁视频| 国产麻豆69| 久久婷婷成人综合色麻豆| 久久精品91无色码中文字幕| 老司机亚洲免费影院| 黄色视频不卡| 久久人妻av系列| 国产不卡一卡二| 国产成人免费观看mmmm| www.自偷自拍.com| av福利片在线| 亚洲精品国产区一区二| 亚洲五月婷婷丁香| 亚洲中文字幕日韩| 超色免费av| 色婷婷久久久亚洲欧美| 少妇裸体淫交视频免费看高清 | 久久久久久久久久久久大奶| 激情在线观看视频在线高清 | 亚洲第一欧美日韩一区二区三区 | 免费一级毛片在线播放高清视频 | 亚洲专区字幕在线| videosex国产| 丁香六月欧美| 国产一区二区三区综合在线观看| 搡老乐熟女国产| 在线观看免费视频网站a站| 成人国语在线视频| 色在线成人网| 国产精品亚洲av一区麻豆| 三上悠亚av全集在线观看| 高清毛片免费观看视频网站 | 亚洲欧洲日产国产| 精品国产一区二区三区四区第35| 国产成人免费观看mmmm| 午夜免费成人在线视频| 日本wwww免费看| 久久久久久人人人人人| 欧美日韩福利视频一区二区| 亚洲中文字幕日韩| 在线观看免费日韩欧美大片| 日本黄色视频三级网站网址 | 久久ye,这里只有精品| 亚洲第一av免费看| 日韩中文字幕视频在线看片| 国产又爽黄色视频| 大片电影免费在线观看免费| 亚洲第一av免费看| 高清av免费在线| 色在线成人网| 久久久久久亚洲精品国产蜜桃av| 新久久久久国产一级毛片| 热99re8久久精品国产| 国产高清视频在线播放一区| 99热国产这里只有精品6| 热re99久久精品国产66热6| 色精品久久人妻99蜜桃| 国产精品98久久久久久宅男小说| 人成视频在线观看免费观看| 午夜激情av网站| 51午夜福利影视在线观看| 精品卡一卡二卡四卡免费| 国产精品.久久久| 国精品久久久久久国模美| 亚洲精品美女久久久久99蜜臀| 国产人伦9x9x在线观看| 热99久久久久精品小说推荐| 伦理电影免费视频| 国产伦理片在线播放av一区| 50天的宝宝边吃奶边哭怎么回事| 欧美黑人欧美精品刺激| 淫妇啪啪啪对白视频| 午夜福利,免费看| 伦理电影免费视频| 午夜福利,免费看| 久久人妻av系列| 宅男免费午夜| 国产一区二区 视频在线| 1024香蕉在线观看| 人人澡人人妻人| 一本一本久久a久久精品综合妖精| 法律面前人人平等表现在哪些方面| 99re在线观看精品视频| 国产精品欧美亚洲77777| 国产又色又爽无遮挡免费看| √禁漫天堂资源中文www| 国产真人三级小视频在线观看| 亚洲国产欧美在线一区| 午夜福利乱码中文字幕| av天堂久久9| 18禁国产床啪视频网站| 9色porny在线观看| 成年人免费黄色播放视频| 99精品在免费线老司机午夜| 日韩熟女老妇一区二区性免费视频| av国产精品久久久久影院| 99re6热这里在线精品视频| 精品第一国产精品| 国产精品二区激情视频| 黄色毛片三级朝国网站| 天天添夜夜摸| 女人爽到高潮嗷嗷叫在线视频| 老司机影院毛片| 成人精品一区二区免费| 久久人妻福利社区极品人妻图片| 亚洲自偷自拍图片 自拍| 久久中文字幕一级| 一区二区三区乱码不卡18| 日韩视频一区二区在线观看| 在线观看舔阴道视频| 露出奶头的视频| 王馨瑶露胸无遮挡在线观看| 久久中文字幕一级| 一边摸一边抽搐一进一出视频| 天堂中文最新版在线下载| 免费日韩欧美在线观看| 纵有疾风起免费观看全集完整版| 一级a爱视频在线免费观看| 久久免费观看电影| 一边摸一边做爽爽视频免费| 免费观看a级毛片全部| 中文字幕制服av| 精品国产乱码久久久久久小说| 欧美+亚洲+日韩+国产| 性少妇av在线| 精品国产一区二区三区四区第35| 黄色丝袜av网址大全| 欧美激情 高清一区二区三区| 天堂8中文在线网| 久久久水蜜桃国产精品网| 国产免费视频播放在线视频| 国产免费现黄频在线看| 一区二区三区乱码不卡18| 51午夜福利影视在线观看| 老熟妇乱子伦视频在线观看| 一边摸一边抽搐一进一小说 | 一本一本久久a久久精品综合妖精| 午夜免费鲁丝| 性高湖久久久久久久久免费观看| 天天躁日日躁夜夜躁夜夜| 精品免费久久久久久久清纯 | 国产主播在线观看一区二区| 久久热在线av| videosex国产| 免费日韩欧美在线观看| 又大又爽又粗| 国产成人欧美| 国产区一区二久久| 精品视频人人做人人爽| 两个人看的免费小视频| 亚洲精品国产精品久久久不卡| 亚洲av成人一区二区三| 国产成人精品无人区| 又紧又爽又黄一区二区| 久久性视频一级片| 日韩制服丝袜自拍偷拍| 777米奇影视久久| 亚洲精品久久成人aⅴ小说| 91大片在线观看| 日韩三级视频一区二区三区| 久久精品国产综合久久久| 少妇裸体淫交视频免费看高清 | 制服人妻中文乱码| 国产精品.久久久| 成人永久免费在线观看视频 | 亚洲国产欧美日韩在线播放| 两人在一起打扑克的视频| 午夜福利欧美成人| 亚洲情色 制服丝袜| 国产精品亚洲一级av第二区| 精品亚洲成国产av| √禁漫天堂资源中文www| 亚洲av美国av| 国产免费视频播放在线视频| 性色av乱码一区二区三区2| 亚洲欧美精品综合一区二区三区| 成人手机av| 在线亚洲精品国产二区图片欧美| 首页视频小说图片口味搜索| 欧美黑人精品巨大| 青青草视频在线视频观看| 欧美日韩中文字幕国产精品一区二区三区 | 嫩草影视91久久| 亚洲精品乱久久久久久| 欧美午夜高清在线| 啦啦啦中文免费视频观看日本| 90打野战视频偷拍视频| 亚洲一区中文字幕在线| 嫁个100分男人电影在线观看| 狠狠精品人妻久久久久久综合| 首页视频小说图片口味搜索| 麻豆成人av在线观看| 亚洲熟女精品中文字幕| 国产在线一区二区三区精| 一级片'在线观看视频| 欧美激情 高清一区二区三区| 国产1区2区3区精品| 免费观看av网站的网址| 侵犯人妻中文字幕一二三四区| 美女主播在线视频| 99久久人妻综合| 亚洲国产欧美在线一区| 美女高潮喷水抽搐中文字幕| 欧美乱码精品一区二区三区| 亚洲一区二区三区欧美精品| 国产高清视频在线播放一区| 亚洲第一欧美日韩一区二区三区 | 欧美另类亚洲清纯唯美| 一二三四社区在线视频社区8| 亚洲av片天天在线观看| 交换朋友夫妻互换小说| 少妇粗大呻吟视频| 自拍欧美九色日韩亚洲蝌蚪91| 亚洲,欧美精品.| 精品卡一卡二卡四卡免费| 国产精品久久久久久人妻精品电影 | 性色av乱码一区二区三区2| 在线观看免费视频日本深夜| 国产麻豆69| 午夜福利乱码中文字幕| 日日摸夜夜添夜夜添小说| 91av网站免费观看| 天堂俺去俺来也www色官网| 国产麻豆69| 久热这里只有精品99| 丁香六月欧美| av网站免费在线观看视频| 精品一区二区三区视频在线观看免费 | 国产xxxxx性猛交| 制服人妻中文乱码| 99国产综合亚洲精品| 欧美日韩av久久| 最黄视频免费看| 欧美精品高潮呻吟av久久| 精品第一国产精品| 国产有黄有色有爽视频| 国产亚洲一区二区精品| 成人国产av品久久久| 精品人妻1区二区| 国产男女内射视频| 国产在线视频一区二区| 久久久久网色| 精品熟女少妇八av免费久了| 国产在线观看jvid| 成人18禁高潮啪啪吃奶动态图| 国产男女超爽视频在线观看| 亚洲五月色婷婷综合| 日本一区二区免费在线视频| 久热这里只有精品99| 黄色毛片三级朝国网站| 久久亚洲真实| 久久久久久久国产电影| 法律面前人人平等表现在哪些方面| 国产在线免费精品| 国产精品98久久久久久宅男小说| 国产成人一区二区三区免费视频网站| avwww免费| 日本av手机在线免费观看| 丝袜美腿诱惑在线| 精品国产超薄肉色丝袜足j| 首页视频小说图片口味搜索| 国产精品二区激情视频| 久久精品亚洲熟妇少妇任你| 久9热在线精品视频| 亚洲精品在线观看二区| 久久精品国产99精品国产亚洲性色 | 国产精品久久电影中文字幕 | 午夜91福利影院| 国产av精品麻豆| 午夜福利视频精品| 一个人免费在线观看的高清视频| 免费在线观看日本一区| 热99久久久久精品小说推荐| 搡老乐熟女国产| 99国产精品免费福利视频| 啦啦啦在线免费观看视频4| 国产一区有黄有色的免费视频| 最新在线观看一区二区三区| 91字幕亚洲| 一进一出抽搐动态| 国产无遮挡羞羞视频在线观看| 亚洲人成电影观看| 亚洲精品在线美女| 成年人黄色毛片网站| 一级a爱视频在线免费观看| 一边摸一边抽搐一进一小说 | 无限看片的www在线观看| 亚洲精品粉嫩美女一区| 色综合婷婷激情| 成在线人永久免费视频| 在线观看免费高清a一片| 十八禁网站免费在线| 久久青草综合色| 亚洲熟妇熟女久久| 午夜日韩欧美国产| 日韩欧美免费精品| netflix在线观看网站| 91av网站免费观看| av电影中文网址| 中文字幕另类日韩欧美亚洲嫩草| 美国免费a级毛片| 最近最新中文字幕大全免费视频| 亚洲自偷自拍图片 自拍| 69av精品久久久久久 | 露出奶头的视频| 香蕉久久夜色| 狠狠狠狠99中文字幕| 丰满少妇做爰视频| 香蕉丝袜av| 成人永久免费在线观看视频 | 午夜福利影视在线免费观看| 日本a在线网址| 老熟妇乱子伦视频在线观看| 91国产中文字幕| 黄网站色视频无遮挡免费观看| 国产av又大| 97在线人人人人妻| 老司机福利观看| 一区二区日韩欧美中文字幕| 国产人伦9x9x在线观看| 国产精品免费一区二区三区在线 | 最黄视频免费看| 久久久久久久国产电影| 精品国产一区二区久久| 老熟女久久久| 日韩中文字幕视频在线看片| 欧美av亚洲av综合av国产av| 最新在线观看一区二区三区| 精品国产一区二区三区四区第35| 亚洲欧洲日产国产| 99精品欧美一区二区三区四区| 一级毛片精品| 国产在线免费精品| 美国免费a级毛片| 国产精品久久久久久人妻精品电影 | 国产xxxxx性猛交| 搡老乐熟女国产| 国产午夜精品久久久久久|