• <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 ?

    Ensemble Machine Learning Based Identifcation of Pediatric Epilepsy

    2021-12-14 09:56:52ShamsahMajedAlotaibiAttaurRahmanMohammedImranBasheerandMuhammadAdnanKhan
    Computers Materials&Continua 2021年7期

    Shamsah Majed Alotaibi,Atta-ur-Rahman,Mohammed Imran Basheer and Muhammad Adnan Khan

    1Department of Computer Science,College of Computer Science and Information Technology,Imam Abdulrahman Bin Faisal University,Dammam,31441,Saudi Arabia

    2Faculty of Computing,Riphah School of Computing&Innovation,Riphah International University,Lahore,Pakistan

    Abstract:Epilepsy is a type of brain disorder that causes recurrent seizures.It is the second most common neurological disease after Alzheimer’s.The effects of epilepsy in children are serious,since it causes a slower growth rate and a failure to develop certain skills.In the medical field,specialists record brain activity using an Electroencephalogram (EEG)to observe the epileptic seizures.The detection of these seizures is performed by specialists,but the results might not be accurate due to human errors;therefore,automated detection of epileptic pediatric seizures might be the optimal solution.This paper investigates the detection of epileptic seizures by applying supervised machine learning techniques.The techniques applied on the data of patients with ages seven years and below from children’s hospital boston massachusetts institute of technology(CHB-MIT)scalp EEG database of epileptic pediatric signals.A group of Na?ve Bayes(NB),Support vector machine(SVM),Logistic regression(LR),k-nearest neighbor (KNN), Linear discernment (LD), Decision tree (DT),and ensemble learning methods were applied to the classification process.The results demonstrated the outperformance of the present study by achieving 100% for all parameters using the Ensemble learning model in contrast to state-of-the-art studies in the literature.Similarly, the SVM model achieved performance with 98.3% for sensitivity, 97.7% for specificity, and 98% for accuracy.The results of the LD and LR models reveal the lower performance i.e.,the sensitivity at 66.9%–68.9%,specificity at 73.5%–77.1%,and accuracy at 70.2%–73%.

    Keywords: Pediatric epilepsy; ensemble learning; machine learning; SVM;EEG data

    1 Introduction

    According to the international league against epilepsy (ILAE) statement, quoted in 2014,epilepsy is a transient occurrence of signs and symptoms due to abnormal, excessive, or synchronous neuronal activity in the brain [1].Epilepsy can be diagnosed by three main symptoms:at least two seizures have occurred over 24 h, reflex seizures have occurred twice or more over 10 years, and/or epilepsy syndrome [1].Epileptic seizure is the most common symptom [2], that is caused by a disrupting episode with the brain’s activities, and not all epileptic patients have seizures [3].Approximately 50 million people over the world have epilepsy [4], that is 1% of the overall population.According to the Saudi epilepsy society, 0.654% of people in Saudi Arabia suffer from this disease.Epilepsy affects all ages, however, the symptoms and signs differ by age group.For example, in newborns, the symptoms involve a lack of oxygen during delivery and/or abnormal brain development.In infants symptoms are brain tumors and/or genetic disorders [5].Therefore, an accurate diagnosis is important.As childhood is the stage of brain formation, epilepsy occurs more dynamically in the nervous system and may interfere with the brain development.That could affect the individual in several ways, such as the failure to develop skills, a slower growth rate, and the possibility of losing previously developed skills [6].Every 4.8/1000 children worldwide suffer from epilepsy.In the US, 0.94/1000 children under 18 suffer from epilepsy [7].In recent years, epilepsy diagnosis in infants and children has been improved,and investigation of new methods has become hot topic for researchers.EEG signals can reflect the state of temporal brain activities.It is a complex and nonlinear interconnection between a billion neurons [8].In addition, it is common to diagnose epilepsy by analyzing the EEG data;in this regard, several studies have focused on aiding epileptic patients to find suitable treatments.Moreover, it involves EEG signal processing prior to application of the identification methods.Hence, the accuracy of the system also depends on the way the EEG signals are processed.In this regard, time and transform domain (frequency transform, wavelet transform etc.) signal processing techqniues have been investigated in the literature [9].Efficacy of the signal processing technique greatly enhances the efficiency of epilyptic pediatric identification approaches.So to identify such a critical disease at the early stages, there is a dire need for investigating the machine learning (ML)techniques.Current study aims to investigate the ensamable based ML techniques for pediatric epilyse identification.

    The organization of the paper is as follows:Section 2 contains a literature review, proposed methods are given in Section 3, Section 4 contains results and discussion while Section 5 concludes the paper.

    2 Review of Literature

    ML has countless applications in almost every field of study and human life.However,in the medical sector, its significance is matchless.Other than pediatric epilepsy, ML has been investigated for detection and prediction of several fatal diseases like COVID19 [10], cardio diseases [11], diabetes [12], Parkinson [13], and many others.In [14,15], the researchers applied the SVM algorithm to classify seizure onset in pediatric epilepsy patients.The dataset from the CHB-MIT [16]contained 23 patient’s files of EEG recording and all patients under eighteen years.It is consisted of eighteen channels containing 163 seizures that were separated into records of one hour each.In [17], the authors designed an advanced seizure prediction via preictal relabeling(ASPPR) algorithm to predict epileptic pediatric seizures.The model achieved 96.30% accuracy for predicting seizures between 1 to 6 mins, 96.13% accuracy for 8 to 13 mins, 94% accuracy for 14 and 19 mins, and 94.2% accuracy for 20 and 25 mins.In [18], the authors proposed a technique to extract features from the epileptic pediatric dataset from the CHB-MIT EEG database.In their proposed method, EEG signals are mapped into 2D space that leads to texture image and the gray-level image domain.Furthermore, they compared their results with other methods and achieved 97.74% accuracy using the SVM classifier with linear kernels.

    The data mining of EEG signals was analyzed by using a time series approach, which calculated peak points (the lowest point in a part of the signals) and valley points (the highest point in a part of the signals) and then calculated the distances between them.The study consisted of three experiments; all of them predicted onset seizures early with minimum latency.Identifying seizures in children is different than in adults because the seizures in children have lacked the characteristics of EEG features.The study in [19] aimed to find the difference between the type of spike called Rolandic in two groups of epilepsy, patients with benign focal epilepsy and patients with structure focal epilepsy, the author used an algorithm with three stages:spike detection, determination parameters, and classification.The proposed method achieved 75% with an Artificial neural network (ANN).Some studies that focused on newborn data, proposed alternative methods for detecting seizures [20–25] and achieved a high-level accuracy compared with previous studies.The number of electrodes may affect pediatric seizure detection.In [26],authors proposed a collective network of binary classifiers (CNBC) using multi-dimensional particle swarm optimization (MD PSO).The proposed method achieved 93% accuracy and it was applied on long-term EEG data for seizures extraction.The authors in [27] detected cognitive impairment in children with epilepsy by using network analysis, and their proposed method achieved 85% accuracy.

    Summary of the state-of-the-art ML related techniques in detection of epilepsy in babies and children are enlisted in Tab.1.According to the comprehensive and systematic literature review, many studies in detecting pediatric epilepsy are done, but the performance still needs to be improved.The highest achieved accuracy of 96% is claimed by [14,15] for the CHB-MIT EEG database.Apart from the detection/prediction accuracy, there is another challenge to identify the right candidate ML algorithm for future and advance prediction of pediatric epilepsy.Since there is a variety of ML algorithms with their own strengths and weaknesses against various application domains.To answer these questions, the current study is performed.The study aims to investigate several ML and ensemble learning algorithms to potentially enhance the performance of EEG data classification.For evaluation of these techniques, several performance metrics are targeted including accuracy, sensitivity (true positive rate) and specificity (true negative rate), etc.

    Table 1:Summary of ML techniques in pediatric epilepsy

    Table 1:Continued

    3 Proposed Approach

    Original EEG signals contain noise from two environments, the first is external environments,such as electrode displacement and cable movement, and the second is internal sources, such as muscle movements and eyes blink [28].These noises affect the signal and as a result the signals may incorrectly classified.Therefore, preprocessing the EEG signals prior to classification is essential and inevitable.The EEGLAB is an open-source toolbox for preprocessing EEG data [29].It is compatible with MATLAB and is used to remove all noises and artifacts from the EEG signals.EEG signals are comprised of five sub-band frequencies:“delta” (0.5–4 Hz), “theta”(4–8 Hz), “alpha” (8–13 Hz), “beta” (13–30 Hz), and “gamma” (>30 Hz), given in Tab.2.The higher frequencies are considered as abnormal [30].These five frequency bands present accurate information regarding brain signals.Therefore, using specific techniques to decompose signals to classify them is an optimal method, and the wavelet transform is a famous technique for this purpose [30].

    Table 2:Frequency bands of EEG signals

    3.1 EEG Data

    The EEG dataset is comprised of signals that need to be processed and transformed into a specific format so that the ML algorithms can be applied.A public CHB-MIT scalp EEG database from Physionet.org was used for the experiment Since the current study focused on children, the patients with age seven and less in the CHB-MIT scalp EEG database were selected as shown in Tab.3.Two files from each patient were used; the first file had no seizure as a“non-seizure” record, while the second had seizures as a “seizures” record.

    Table 3:CHB-MIT scalp EEG database information for age <= 7

    3.2 Wavelet Transform

    Feature extraction is a process that represents specific information about the given input [31].In biomedical signals, feature extraction represents specific behavior about signals, and it reduces the dimensionality or compresses the data to analyze it.EEG signals are in time-domain that could not provide the useful information.Wavelet transforms convert the time domain signals into the frequency domain, and this technique works well with non-stationary signals such as EEG signals.There are two types of wavelet tranform namely continuous wavelet transform (CWT)and discrete wavelet transform (DWT).CWT matches the signal with the wavelet basis function at continuous-time and frequency growing, and the data must be digitized.The equation of the wavelet function [32] is described as follows:

    3.3 Machine Learning Algorithm

    In the current work, the following ML techniques are used:

    ? Logistic Regression (LR)

    ? Decision Tree (DT)

    ? Na?ve Bayes (NB)

    ? Support vector machine (SVM)

    ? K-Nearest Neighbor (KNN)

    ? Ensemble Learning

    ? Linear Discriminant (LD)

    These algorithms are good candidates for classification problems [35–37].In the current study,these algorithms were tested on an “Intel (R) Core (TM) i7-5500”with a CPU speed of 2.40 GHz and RAM of 16 GB; the system type was 64-bit, running on Windows 8.Seven algorithms including LR, DT, LD, NB, SVM, k-NN, and ensemble learning were employed, and their performance was measured.

    3.4 Preprocessing

    The first step in EEG signal processing is to remove artifacts.To do so, specific software must be used, such as MATLAB or Python.Then, the feature from the signals data must be extracted using feature extraction methods, such as wavelet transform.When features are extracted, the signals are ready to be classified by the ML techniques.Finally, the results compared with recent studies to evaluate it.The pipeline processing of this study is illustrated in Fig.1.

    Figure 1:Processing pipeline steps

    To remove artifacts from signals, a finite impulse response (FIR) filter was applied.The FIR filter consisted of “high-pass” and “l(fā)ow-pass” filters.The “high-pass” filter was used to “allow frequencies higher than the border to pass through it while blocking low frequencies,” and the“l(fā)ow-pass” filter was used to allow frequencies lower than the border to pass through it while blocking high frequencies.

    In this paper, the high-pass filter border was 0.5 Hz, and the low-pass filter border was 40 Hz.These boundary frequencies were selected because 0.5 to 40 Hz represents the range of the five frequency bands, from delta to gamma.However, any frequencies lower than 0.5 Hz and higher than 40 Hz are regarded as noisy signals.Since the EEG data is comprised of nonstationary signals, DWT is suitable since it captures features in both the “time domain” and“frequency domain.” The Daubechies family with order 9 is applied.To select a convenient level of decomposition in the Daubechies family, wavelet decomposition spilled the original signal into a different band of frequencies called the A’s and D’s, which are approximations and details of the coefficient information, respectively and they complement each other [38–40].With this information related to high-pass and low-pass frequencies, this procedure is presented in Fig.2 by sampling the EEG at Nyquist rate [41].In each stage, two types of coefficients exist:details as high-pass frequencies and approximations as low-pass frequencies, together with the number for the level (e.g., in level one there are D1 and A1).This procedure is repeated on the approximation side until it reaches the low-pass frequency.Fig.3 presents the full decomposition levels of a single signal at level 9.The band corresponding to nine levels of EEG signal decomposition are presented in Tab.4, and the signals are decomposed into D1 to D9 and A9.

    Figure 2:Wavelet decomposition tree of level 9

    Figure 3:Decomposition levels of single signal at level 9

    Table 4:Signal decomposition

    Statistics over the sets of coefficients are used to decrease the dimensionality of the extracted feature vectors and to represent the time-frequency distribution of the EEG signals.The statistical features selected in this study are “maximum,” “minimum,” “mean,” “median,” and “standard deviation (STD)” of the wavelet coefficients in each original signal.Based on the feature extraction, 9-dimensional feature sets (from D1 to D9 and A9) over the five statistics are calculated.Consequently, average of the statistical features of the wavelet coefficients for each channel is calculated.As an example, Tab.5 presents the extracted features in five statistics sets of two signals in the various decomposition levels for patient 16.The coefficients are calculated by the signal processing toolbox of Matlab.

    Table 5:Statistical features of wavelet coefficients of two signals in patient 16

    3.5 Performance Parameters

    To classify the features, as shown in Tab.5 with statistical features as rows and the 9 levels of wavelet decomposition as columns were produced and imported into the classification learner toolbox of Matlab to apply the proposed ML techniques.In this study, three performance parameters were used to evaluate the proposed model, namely, accuracy, sensitivity, and specificity according to the following equations [42]:

    Where, “TP/FP” is a “true/false” positive, and “TN/FN” is a “true/false” negative class after testing the model.The accuracy is a common method used to measure the classifier performance by dividing the number of correct classes by the number of all classes multiply by 100.Whereas the sensitivity and the specificity are statistical measures for classification performance.Sensitivity measures the true positive value and specificity measures true negative value [43].

    4 Results and Discussion

    After extracting useful features from the EEG signals, seven algorithms were applied to classify the data into “epileptic” and “non-epileptic” seizures, and the performance parameters were calculated to evaluate the model.This section presents the results as well as a comparison of the study with previous studies that used the same dataset.The data were divided into two sets:training and testing, with 90% and 10% division, respectively for each classifier.Then, the sensitivity, specificity, and accuracy for each classifier were calculated for the entire dataset and averaged.The results of the performance measurement parameters for all patients equal and less than 7 years old are presented in Tab.6 and depicted in Fig.4 as well.It can be observed that the best performance was achieved with Ensemble learning which achieved 100% accuracy overall and indicating that the model predicted all classes successfully.SVM achieved good accuracy which is 98% overall.The lowest accuracies were achieved with LD and LR, with 70.2% and 73% overall,respectively.NB, KNN, and DT classifiers achieved satisfactory accuracies with 87.5%, 90.2%,and 92.3%, respectively.In the KNN model, the number of neighbors (K) that achieved the best accuracy was 3 (while 1 and 2 achieved the same accuracy but lower than 3).When the ensemble learning model was applied, the bagged tree method was used to solve the classification problems and the DT was used for building the learner type of ensemble classifier.

    Table 6:Performance results for all patients

    Table 6:Continued

    Figure 4:The chart of aggregate performance results

    There are various ways to assess classifier performance like scatter plots, confusion matrices,and receiver operation characteristic (ROC) curves.Presented below are the three assessment methods as an example for patient 16.The scatter plot of the LD model is presented in Fig.5.Further, the classifier result after training the data is presented, in which the correct and incorrect classes are denoted with a dot and as X, respectively, while the different colors refer to different classes.For the LD model, confusion matrix is presented in Fig.6 as an example and the classifier performance for each class is presented.The rows present the predicted classes, while the columns display the actual classes.The blue cells denote that the classifiers are performing well, while the red cells denote that they are not.The classifier predicted the true negative classes correctly and predicted twelve of the false-negative classes incorrectly.It appears that the classifier peforms well in the true classes and vice versa.

    Figure 5:Scatter plot of the LD model

    Figure 6:Confusion matrix of the LD model

    Figure 7:ROC curve of the NB model

    The ROC curve is another method to assess model performance.It provides the TP rate versus the FP rate of the classifier in the chart.For example, Fig.7 illustrates the ROC curve of the NB model for patient 16 as an example.The red marker displays the value of the “true positive” and “false positive” of the classifier.The blue area under the curve indicates the quality of the classifier.A larger area under the curve indicates better performance and vice versa.The accuracies of the seven models were satisfactory, indicating that the proposed method worked well on the EEG data.Ensamble learning and SVM model achieved high accuracies overall with 100% and 98%, respectively.Based on the previous studies presented in the literature review,the SVM classifier demonstrated high performance.From the experiment, it is observed that the outperformed accuracies were obtained by the Ensemble learning model, which achieved 100%overall which is the highest accuracy achieved among the seven models.On the other hand, the LD and LR models achieved the lowest accuracies among the algorithms, with 70.2% and 73% for LD and LR overall, respectively.In comparing the results with other studies that used the same EEG dataset the Ensemble learning method produced better sensitivity, specificity, and accuracy,at 100%.According to Tab.7, proposed model significantly outperformed recent studies, and with lesser complexity.Satirasethawong et al.[44] proposed an algorithm for evaluating their methods of epileptic seizure classification.This algorithm was developed based on static methods.They used one performance parameter, namely sensitivity (in [45,46] they also used only the sensitivity as a performance parameter), and it achieved good results, at 88.50%.The results in [47] were superior to those of [48], and the KNN performed well at 98%.Compard to the proposed work,no methods achieved 100%, but overall, their results were satisfactory.In [49–51], the authors used a Convolutional neural network (CNN) classifier, and this demonstrated a significant performance reach to 99% in [51] but with a huge complexity.Nonetheless, complexity of the proposed method is adequate enough for the application at hand.Because major time investment is required for processing of EEG signals.Once it is done, identification task is of moderate complexity and appropriate for such the soft real time application.Moreover, the techniques are applied on offline dataset.

    Table 7:Comparison of performance of different classifiers in recent studies

    5 Conclusion and Future Work

    Epilepsy is a neurological disease that affects approximately 1% of the world’s population.Seizures are a common symptom of epilepsy, and recently they have been used to diagnose the disease in computer science research by using machine learning techniques.To observe the seizures, the brain activity is recorded EEG signals, which is used as data in epilepsy classification processes.The goal of this work is to enhance the performance of detecting pediatric epilepsy by analyzing EEG data and classifying it into “epileptic” and “non-epileptic” seizures by applying various machine learning techniques as well as ensamble learning technique.To achieve this goal,the patients with 7 years old and less from the EEG CHB-MIT scalp database were analyzed by using EEGLAB (a toolbox in MATLAB) to remove the artifacts from the EEG signals.DWT with Daubechies family order was used since the signals were non stationary.In the current study,seven algorithms were used:KNN, DT, LD, SVM, ensemble learning, NB, and LR.The Ensemble learning and SVM models in this work outdo the performance over other models in diagnosing epileptic seizures in the literature.Future work could include creating a new method and tools to analyze signals accurately and easily.This would assist in diagnosing epileptic seizures and other neurological diseases in a shorter time and with fewer processing steps.In addition, further advanced algorithms could be applied, including deep learning and extreme learning machines,etc.More importantly, the research should be carried out on the detection of various types of seizures rather than just presence or absense.

    Acknowledgement:This research is acknowledged to the children suffering from epilyptic disease.

    Funding Statement:Authors received no specific funding for this study.

    Conficts of Interest:Authors declare that they have no conflicts of interest to report regarding the study.

    久久久久久人人人人人| 两性夫妻黄色片| 国产亚洲av嫩草精品影院| 在线观看午夜福利视频| 亚洲国产欧美一区二区综合| 又大又爽又粗| 国产高清激情床上av| 亚洲欧美日韩东京热| 亚洲自偷自拍图片 自拍| 在线a可以看的网站| 不卡一级毛片| ponron亚洲| 亚洲av成人不卡在线观看播放网| 最好的美女福利视频网| 欧美又色又爽又黄视频| 免费看a级黄色片| 色在线成人网| www日本黄色视频网| 亚洲精品久久成人aⅴ小说| 精品国产美女av久久久久小说| 亚洲美女视频黄频| 午夜免费观看网址| 一进一出好大好爽视频| 波多野结衣高清作品| 亚洲国产欧美人成| 亚洲男人天堂网一区| 妹子高潮喷水视频| 欧美日韩黄片免| av福利片在线观看| 亚洲中文日韩欧美视频| 国产av一区在线观看免费| 18禁裸乳无遮挡免费网站照片| 美女高潮喷水抽搐中文字幕| 日本成人三级电影网站| 男男h啪啪无遮挡| 亚洲男人的天堂狠狠| 久久久久久久精品吃奶| 99精品在免费线老司机午夜| 亚洲欧美激情综合另类| 1024手机看黄色片| 久久午夜综合久久蜜桃| 老司机深夜福利视频在线观看| 亚洲电影在线观看av| 亚洲国产看品久久| 久久久精品欧美日韩精品| 久久久久九九精品影院| 少妇的丰满在线观看| 黄色毛片三级朝国网站| 757午夜福利合集在线观看| 欧美一区二区精品小视频在线| 少妇被粗大的猛进出69影院| 十八禁网站免费在线| 床上黄色一级片| 久久中文字幕一级| 可以在线观看的亚洲视频| 欧美人与性动交α欧美精品济南到| 国产成人欧美在线观看| 99精品在免费线老司机午夜| 在线十欧美十亚洲十日本专区| ponron亚洲| 久久精品国产清高在天天线| 久久人妻福利社区极品人妻图片| 日本一二三区视频观看| 亚洲成a人片在线一区二区| xxx96com| 99精品在免费线老司机午夜| 搡老熟女国产l中国老女人| 亚洲欧美日韩东京热| 99久久久亚洲精品蜜臀av| 最好的美女福利视频网| 国产精品久久久久久精品电影| 久久中文看片网| 亚洲av电影在线进入| 亚洲aⅴ乱码一区二区在线播放 | 日本在线视频免费播放| 波多野结衣巨乳人妻| 精品不卡国产一区二区三区| 少妇被粗大的猛进出69影院| 最近在线观看免费完整版| 最近最新中文字幕大全电影3| 全区人妻精品视频| 欧美性猛交黑人性爽| 中文字幕精品亚洲无线码一区| 99国产精品99久久久久| 国产在线观看jvid| 又大又爽又粗| 精品国产乱子伦一区二区三区| 不卡一级毛片| 精品国产乱码久久久久久男人| 久久香蕉激情| 欧美日本视频| www日本黄色视频网| 免费人成视频x8x8入口观看| 精品第一国产精品| 亚洲av成人不卡在线观看播放网| 精品免费久久久久久久清纯| 日韩欧美国产在线观看| 91字幕亚洲| 淫秽高清视频在线观看| 99热6这里只有精品| 韩国av一区二区三区四区| 人人妻人人澡欧美一区二区| 亚洲黑人精品在线| 怎么达到女性高潮| 18禁观看日本| 51午夜福利影视在线观看| 久久久久国产一级毛片高清牌| 国产精品一区二区三区四区免费观看 | a级毛片在线看网站| 中文在线观看免费www的网站 | x7x7x7水蜜桃| 日本熟妇午夜| 亚洲男人天堂网一区| 在线观看日韩欧美| 老司机深夜福利视频在线观看| 男人舔女人下体高潮全视频| 久9热在线精品视频| 波多野结衣巨乳人妻| 午夜福利18| 两个人视频免费观看高清| 亚洲男人的天堂狠狠| 国产视频一区二区在线看| 久久久久久久久久黄片| 免费在线观看成人毛片| 国语自产精品视频在线第100页| 免费电影在线观看免费观看| 午夜老司机福利片| 免费在线观看视频国产中文字幕亚洲| 国产精品一及| 精品一区二区三区四区五区乱码| 又黄又爽又免费观看的视频| 91麻豆精品激情在线观看国产| 欧美zozozo另类| 毛片女人毛片| 一进一出抽搐gif免费好疼| 亚洲精品色激情综合| 俺也久久电影网| 亚洲国产中文字幕在线视频| 久久 成人 亚洲| 久久香蕉精品热| 午夜福利欧美成人| 国产精品爽爽va在线观看网站| 一本一本综合久久| 成人三级做爰电影| xxx96com| 国产伦一二天堂av在线观看| 日本成人三级电影网站| 国产精品久久久久久亚洲av鲁大| 一级a爱片免费观看的视频| 亚洲熟妇中文字幕五十中出| 日韩欧美免费精品| 欧美人与性动交α欧美精品济南到| 高清在线国产一区| 国产精品国产高清国产av| 久久欧美精品欧美久久欧美| 精品乱码久久久久久99久播| 免费人成视频x8x8入口观看| 欧美3d第一页| 波多野结衣巨乳人妻| 精品国产亚洲在线| 亚洲精品久久成人aⅴ小说| 一夜夜www| 国产片内射在线| 一进一出抽搐gif免费好疼| 日韩欧美免费精品| 看免费av毛片| 久久这里只有精品中国| 1024手机看黄色片| 亚洲自偷自拍图片 自拍| 他把我摸到了高潮在线观看| 夜夜夜夜夜久久久久| 国产乱人伦免费视频| 精品乱码久久久久久99久播| 欧美一级毛片孕妇| 少妇粗大呻吟视频| 亚洲五月天丁香| 免费在线观看日本一区| 国产真人三级小视频在线观看| 嫁个100分男人电影在线观看| 黄色毛片三级朝国网站| 亚洲片人在线观看| 午夜激情福利司机影院| 亚洲av五月六月丁香网| 国产精品自产拍在线观看55亚洲| 亚洲天堂国产精品一区在线| 无遮挡黄片免费观看| 中国美女看黄片| 国产探花在线观看一区二区| 国产成人系列免费观看| 91国产中文字幕| 日韩欧美在线乱码| 免费在线观看完整版高清| 午夜激情福利司机影院| 亚洲电影在线观看av| av在线天堂中文字幕| 丰满人妻熟妇乱又伦精品不卡| 日韩欧美 国产精品| 91av网站免费观看| 国产久久久一区二区三区| 久久婷婷成人综合色麻豆| 叶爱在线成人免费视频播放| 欧美一级a爱片免费观看看 | 非洲黑人性xxxx精品又粗又长| 人人妻人人看人人澡| 男女做爰动态图高潮gif福利片| 亚洲成人久久爱视频| 又黄又爽又免费观看的视频| 一个人免费在线观看的高清视频| 成人18禁高潮啪啪吃奶动态图| av中文乱码字幕在线| 欧美成人一区二区免费高清观看 | 一进一出抽搐gif免费好疼| а√天堂www在线а√下载| 久久国产精品人妻蜜桃| 日本五十路高清| 久久天躁狠狠躁夜夜2o2o| 国产精品电影一区二区三区| 国产欧美日韩一区二区三| 久久这里只有精品19| 又紧又爽又黄一区二区| 两个人视频免费观看高清| 啦啦啦韩国在线观看视频| 国产又色又爽无遮挡免费看| 国产欧美日韩一区二区精品| av福利片在线观看| 久久精品国产亚洲av高清一级| 欧美色视频一区免费| 香蕉久久夜色| 国产一区二区激情短视频| 欧美日韩亚洲国产一区二区在线观看| 两个人的视频大全免费| 色精品久久人妻99蜜桃| 日本熟妇午夜| 亚洲人成77777在线视频| www.熟女人妻精品国产| 国产在线观看jvid| 亚洲一卡2卡3卡4卡5卡精品中文| 在线a可以看的网站| 极品教师在线免费播放| 午夜精品一区二区三区免费看| 在线视频色国产色| 国产成人一区二区三区免费视频网站| 老汉色∧v一级毛片| 久久精品国产亚洲av高清一级| 欧美最黄视频在线播放免费| 黄片小视频在线播放| 首页视频小说图片口味搜索| 亚洲av成人不卡在线观看播放网| 国产熟女午夜一区二区三区| 好看av亚洲va欧美ⅴa在| 91麻豆精品激情在线观看国产| 欧美丝袜亚洲另类 | 国产私拍福利视频在线观看| 夜夜夜夜夜久久久久| 久久久久久免费高清国产稀缺| 欧美成人性av电影在线观看| 亚洲一区二区三区不卡视频| 精品久久久久久久毛片微露脸| xxx96com| 午夜免费观看网址| 午夜成年电影在线免费观看| 日韩精品青青久久久久久| 久久精品成人免费网站| 欧美日韩瑟瑟在线播放| 丝袜美腿诱惑在线| 成人精品一区二区免费| 老汉色av国产亚洲站长工具| 成人18禁在线播放| av欧美777| 久久这里只有精品19| 欧美三级亚洲精品| 精品久久久久久久末码| 成人高潮视频无遮挡免费网站| 国产午夜精品久久久久久| 精品久久久久久久久久久久久| 在线视频色国产色| e午夜精品久久久久久久| 亚洲一区二区三区色噜噜| 亚洲aⅴ乱码一区二区在线播放 | 久久性视频一级片| 国产亚洲av高清不卡| 在线观看美女被高潮喷水网站 | 久久久久久久久久黄片| 日韩欧美国产在线观看| 亚洲国产精品sss在线观看| 中国美女看黄片| 欧美大码av| 一二三四在线观看免费中文在| av中文乱码字幕在线| 1024视频免费在线观看| 成人欧美大片| 午夜激情av网站| 亚洲精品一区av在线观看| 最近视频中文字幕2019在线8| 精品久久蜜臀av无| 不卡av一区二区三区| 国产精品av视频在线免费观看| 久久午夜亚洲精品久久| 波多野结衣巨乳人妻| 国产成人系列免费观看| 久久中文看片网| 国产伦人伦偷精品视频| 成人手机av| 91麻豆av在线| 国产精品免费视频内射| 亚洲精品粉嫩美女一区| 精品欧美一区二区三区在线| 亚洲成人免费电影在线观看| 露出奶头的视频| 久久久国产成人精品二区| 岛国在线观看网站| 99在线人妻在线中文字幕| 日本撒尿小便嘘嘘汇集6| 欧美精品啪啪一区二区三区| 深夜精品福利| 国产区一区二久久| 亚洲电影在线观看av| 色综合站精品国产| 国产精品 欧美亚洲| 国产一区二区三区视频了| 亚洲精品国产精品久久久不卡| 亚洲欧美激情综合另类| 国产99久久九九免费精品| 婷婷亚洲欧美| 亚洲 欧美 日韩 在线 免费| 久久欧美精品欧美久久欧美| 国产av不卡久久| 一个人观看的视频www高清免费观看 | 最近在线观看免费完整版| 精品久久久久久久久久久久久| 777久久人妻少妇嫩草av网站| 不卡一级毛片| 黄色女人牲交| 午夜老司机福利片| 欧美不卡视频在线免费观看 | 日本三级黄在线观看| 妹子高潮喷水视频| 五月玫瑰六月丁香| 真人一进一出gif抽搐免费| 亚洲午夜理论影院| 黄色女人牲交| 国产区一区二久久| 色老头精品视频在线观看| 中文字幕人成人乱码亚洲影| 久久亚洲真实| 日韩大尺度精品在线看网址| 男女午夜视频在线观看| av超薄肉色丝袜交足视频| 日韩大尺度精品在线看网址| 亚洲乱码一区二区免费版| 丝袜人妻中文字幕| 真人做人爱边吃奶动态| 久久亚洲精品不卡| 欧美色视频一区免费| 在线十欧美十亚洲十日本专区| 久久久久久久久久黄片| av片东京热男人的天堂| 亚洲专区国产一区二区| 国产黄a三级三级三级人| 特大巨黑吊av在线直播| 国产一级毛片七仙女欲春2| 俄罗斯特黄特色一大片| 两个人看的免费小视频| 2021天堂中文幕一二区在线观| 99在线视频只有这里精品首页| 妹子高潮喷水视频| 国产真实乱freesex| 欧美日韩黄片免| 久久性视频一级片| 色哟哟哟哟哟哟| 一本一本综合久久| 国产精品综合久久久久久久免费| 亚洲全国av大片| 最近在线观看免费完整版| 色哟哟哟哟哟哟| 国产av又大| 精品国产亚洲在线| 18美女黄网站色大片免费观看| 久久精品国产综合久久久| 免费电影在线观看免费观看| 精品久久蜜臀av无| 亚洲全国av大片| 91国产中文字幕| 欧美日韩精品网址| 淫秽高清视频在线观看| 又爽又黄无遮挡网站| 国产精品国产高清国产av| 国产黄a三级三级三级人| 国产区一区二久久| 老熟妇乱子伦视频在线观看| 美女高潮喷水抽搐中文字幕| 国产69精品久久久久777片 | 变态另类成人亚洲欧美熟女| 久久久国产精品麻豆| 精品久久久久久久久久久久久| 99国产极品粉嫩在线观看| 十八禁人妻一区二区| 女人爽到高潮嗷嗷叫在线视频| 日韩欧美三级三区| 特大巨黑吊av在线直播| ponron亚洲| 这个男人来自地球电影免费观看| netflix在线观看网站| 18禁国产床啪视频网站| 国产麻豆成人av免费视频| 亚洲精品在线美女| 国产av又大| 少妇粗大呻吟视频| 日本撒尿小便嘘嘘汇集6| 久久人人精品亚洲av| 国产97色在线日韩免费| av在线播放免费不卡| 日本三级黄在线观看| 国产欧美日韩一区二区三| 久久热在线av| 久久久久久国产a免费观看| 亚洲av片天天在线观看| 男女之事视频高清在线观看| 欧美精品亚洲一区二区| 国产亚洲av嫩草精品影院| 久久婷婷成人综合色麻豆| 在线观看免费午夜福利视频| 2021天堂中文幕一二区在线观| www国产在线视频色| 国产不卡一卡二| 色尼玛亚洲综合影院| 国产蜜桃级精品一区二区三区| 一本精品99久久精品77| 十八禁网站免费在线| 真人做人爱边吃奶动态| 国产黄色小视频在线观看| 老熟妇乱子伦视频在线观看| 亚洲五月婷婷丁香| 大型黄色视频在线免费观看| 亚洲免费av在线视频| 中文字幕人成人乱码亚洲影| 久久午夜综合久久蜜桃| 国产一区二区激情短视频| 韩国av一区二区三区四区| 18禁美女被吸乳视频| 超碰成人久久| 这个男人来自地球电影免费观看| 日韩欧美 国产精品| 免费在线观看亚洲国产| 男女床上黄色一级片免费看| 亚洲一区高清亚洲精品| 美女免费视频网站| 亚洲天堂国产精品一区在线| 岛国视频午夜一区免费看| 成人亚洲精品av一区二区| 99国产极品粉嫩在线观看| 日本一区二区免费在线视频| 熟女电影av网| 久久精品综合一区二区三区| 欧美国产日韩亚洲一区| av天堂在线播放| 国产成人影院久久av| 日韩国内少妇激情av| 亚洲av成人av| 最新美女视频免费是黄的| 五月伊人婷婷丁香| 国产视频内射| 日韩免费av在线播放| 桃红色精品国产亚洲av| 国产精品一区二区精品视频观看| 国产精品av久久久久免费| 日日摸夜夜添夜夜添小说| 国产欧美日韩一区二区三| 法律面前人人平等表现在哪些方面| 少妇人妻一区二区三区视频| 久久久久性生活片| 嫩草影视91久久| 麻豆国产av国片精品| 动漫黄色视频在线观看| 日本 欧美在线| 曰老女人黄片| 日本a在线网址| 中文资源天堂在线| 色综合站精品国产| 99精品在免费线老司机午夜| 99热只有精品国产| 在线播放国产精品三级| 免费电影在线观看免费观看| 看黄色毛片网站| 亚洲一码二码三码区别大吗| 999久久久精品免费观看国产| bbb黄色大片| 精华霜和精华液先用哪个| 校园春色视频在线观看| 18禁国产床啪视频网站| 99精品在免费线老司机午夜| 无遮挡黄片免费观看| 免费看十八禁软件| 欧美+亚洲+日韩+国产| 精品午夜福利视频在线观看一区| 亚洲美女视频黄频| 丁香六月欧美| 性色av乱码一区二区三区2| 成年版毛片免费区| 99精品久久久久人妻精品| 亚洲国产精品999在线| www.熟女人妻精品国产| 亚洲av日韩精品久久久久久密| 成人高潮视频无遮挡免费网站| 91国产中文字幕| av天堂在线播放| 久久伊人香网站| 色综合亚洲欧美另类图片| 色尼玛亚洲综合影院| 丰满人妻一区二区三区视频av | 日本黄色视频三级网站网址| 男人的好看免费观看在线视频 | 桃红色精品国产亚洲av| 999精品在线视频| 午夜精品久久久久久毛片777| 日本黄大片高清| 欧美人与性动交α欧美精品济南到| 身体一侧抽搐| 成人av在线播放网站| 日本五十路高清| 久久久国产成人精品二区| 精华霜和精华液先用哪个| x7x7x7水蜜桃| 亚洲自拍偷在线| 久久久久国产一级毛片高清牌| 男女做爰动态图高潮gif福利片| 欧洲精品卡2卡3卡4卡5卡区| 国产主播在线观看一区二区| 黄色丝袜av网址大全| 国产又色又爽无遮挡免费看| 成熟少妇高潮喷水视频| 日本 av在线| 美女扒开内裤让男人捅视频| 日韩欧美一区二区三区在线观看| 日本在线视频免费播放| 香蕉av资源在线| 最近最新中文字幕大全电影3| 美女高潮喷水抽搐中文字幕| 精品国产乱子伦一区二区三区| 亚洲中文av在线| 看片在线看免费视频| 视频区欧美日本亚洲| 在线观看舔阴道视频| 大型av网站在线播放| 久久国产精品影院| 丝袜人妻中文字幕| 全区人妻精品视频| 成年人黄色毛片网站| 老汉色∧v一级毛片| 制服诱惑二区| 不卡一级毛片| 午夜精品在线福利| ponron亚洲| 99久久精品国产亚洲精品| 国产亚洲精品第一综合不卡| 老司机午夜十八禁免费视频| 亚洲专区中文字幕在线| 99在线视频只有这里精品首页| 午夜福利高清视频| 可以在线观看的亚洲视频| 伊人久久大香线蕉亚洲五| 日本一区二区免费在线视频| 老熟妇仑乱视频hdxx| 国产欧美日韩一区二区精品| 欧美一区二区精品小视频在线| x7x7x7水蜜桃| 在线视频色国产色| 国产精品久久电影中文字幕| 两个人免费观看高清视频| 亚洲国产精品久久男人天堂| 婷婷六月久久综合丁香| 亚洲国产精品久久男人天堂| 黄色女人牲交| 制服人妻中文乱码| 香蕉av资源在线| 99热这里只有是精品50| 日本精品一区二区三区蜜桃| 一级毛片女人18水好多| 亚洲国产欧美人成| 久久久久久久久中文| 午夜福利免费观看在线| 国产精品野战在线观看| 欧美一区二区国产精品久久精品 | 成人特级黄色片久久久久久久| 嫁个100分男人电影在线观看| 亚洲精品中文字幕在线视频| 三级毛片av免费| 五月伊人婷婷丁香| 国产精品永久免费网站| 亚洲激情在线av| 精品第一国产精品| 88av欧美| 精品国内亚洲2022精品成人| 亚洲中文av在线| 又黄又粗又硬又大视频| 亚洲aⅴ乱码一区二区在线播放 | a级毛片在线看网站| 老汉色∧v一级毛片| 老司机午夜十八禁免费视频| 一a级毛片在线观看| 亚洲人成网站高清观看| 亚洲国产欧美人成| 超碰成人久久| a在线观看视频网站| 一进一出抽搐gif免费好疼| 最新在线观看一区二区三区| 午夜a级毛片| 久久久久精品国产欧美久久久| 九色成人免费人妻av| 成人永久免费在线观看视频| 国产精品 国内视频| 每晚都被弄得嗷嗷叫到高潮| 日本撒尿小便嘘嘘汇集6| 日韩精品免费视频一区二区三区| 亚洲在线自拍视频|