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A Survey on Various Disease Prediction Techniques

An analysis of various diseases have been predicted using multiple data mining and text mining techniques. In this article we are going to discuss about 6 prediction techniques. Using gene expression pattern we predict the disease outcome and implementation of pathway based approach for classifying disease based on hyper box principles, we also present a novel hybrid prediction model with missing value imputation HPM MI which analyze imputation using simple k means clustering. A technique based on CCAR Constraint Class Association Rule has been used for reducing time consumption in prediction of a particular disease. We have discussed about text mining technique and their applications. Another technique has also been studied about hyper triglyceride mia from anthropometric measures which diverge according to age and gender. Using multilayer classifiers for disease prediction we can achieve high diagnosis accuracy and high performance. C. Leancy Jannet | G. Sumalatha "A Survey on Various Disease Prediction Techniques" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-2 | Issue-6 , October 2018, URL: https://www.ijtsrd.com/papers/ijtsrd18624.pdf Paper URL: http://www.ijtsrd.com/biological-science/bioinformatics/18624/a-survey-on-various-disease-prediction-techniques/c-leancy-jannet<br>

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A Survey on Various Disease Prediction Techniques

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  1. International Journal of Trend in International Open Access Journal International Open Access Journal | www.ijtsrd.com International Journal of Trend in Scientific Research and Development (IJTSRD) Research and Development (IJTSRD) www.ijtsrd.com ISSN No: 2456 ISSN No: 2456 - 6470 | Volume - 2 | Issue – 6 | Sep 6 | Sep – Oct 2018 A Survey on Various Disease Prediction Techniques n Various Disease Prediction Techniques n Various Disease Prediction Techniques C. Leancy Jannet Leancy Jannet1, G. V. Sumalatha2 1Student, 2Assistant Professor Sri Krishna College of Arts and Science, Coimbatore Department of CT, Sri Krishna College Coimbatore ABSTRACT An analysis of various diseases have been predicted using multiple data mining and text mining techniques. In this article we are going to discuss about 6 prediction techniques. Using gene expression pattern we predict the disease outcome and implementation of pathway based approach for classifying disease based on hyper box principles, we also present a novel hybrid prediction model with missing value imputation (HPM-MI) which analyze imputation using simple k-means clustering. A technique based on CCAR (Constraint Clas Association Rule) has been used for reducing time consumption in prediction of a particular disease. We have discussed about text mining technique and their applications. Another technique has also been studied about hyper triglyceride mia from anthropom measures which diverge according to age and gender. Using multilayer classifiers for disease prediction we can achieve high diagnosis accuracy and high performance. Keyword: Prediction, Genes, Data Mining, Text Mining, Hyper triglyceride mi a, Missing Values, Hmv and Classifiers 1.INTRODUCTION In this article we are going to discuss about 6 techniques for predicting disease. In the first technique diseases can be predicted by gene expression pattern. For selective distinctive genes feature selection algorithm classification 2 approaches are used network based approaches and pathway based approach and through hyper box representation diseases are classified The second technique is predicting the disease using MVI we first evaluate 11 missing data imputation techniques practically and then find the perfect method for grasping missing values from dataset using k-means clustering[2]. The third prediction means clustering[2]. The third prediction technique is mining CARs (class association rules) which locates relationship among item labels. These item set constraints minimize CARs and lessen the search space and enhance the performance, first a tree structure is initiated for efficient mining, second 2 theorems for soon trimming rare item lastly efficient and fast algorithm for mining CARs 2 approaches are used pre processing [3]. The fourth technique is text mining which help researchers in assessing scientific literature. Information can be occurences based method and NLP and text mining tools are discussed technique is hyper triglyceride measures based on data mining. Many diseases can be predicted by the change in hyper varies according to age and gender technique is multilayer classifier for disease prediction. A huge number of prediction models can be build from data mining techniques. Here the concept of machine learning is extended learning are additionally classified into supervised and unsupervised learning. 2. RELATED WORK 2.1. Pathway Based Approach Through gene expression diseases can be predicted where samples of genes are sketched as specimen of different disease states for understanding the disease phenotype. The computation of gene expression estimate disease outcome. By using feature selection algorithm we can pick a batch of genes which are differently expressed. In network based approaches disease module based methods suspect that all cellular element that are owned to the identical topological, working or disease module have a inflated chance of having same disease. Greedy search is executed over a PIN (People of Information Network) to pinpoint a number of gene modules whose mean countenance is e modules whose mean countenance is various diseases have been predicted using multiple data mining and text mining techniques. In this article we are going to discuss about 6 prediction techniques. Using gene expression pattern we predict the disease outcome and (class association rules) ationship among item sets and class labels. These item set constraints minimize CARs and lessen the search space and enhance the performance, first a tree structure is initiated for efficient mining, second 2 theorems for soon trimming rare item set, y efficient and fast algorithm for mining CARs 2 ased approach for box principles, we also present a novel hybrid prediction model with processing and post MI) which analyze means clustering. A (Constraint Class [3]. The fourth technique is text mining which help researchers in assessing scientific can be withdrawn using co- occurences based method and NLP-based methods and text mining tools are discussed [4]. Fifth triglyceride mia by anthropometric measures based on data mining. Many diseases can be predicted by the change in hyper triglyceride mia it varies according to age and gender [6]. Sixth and final technique is multilayer classifier for disease prediction. A huge number of prediction models can be build from data mining techniques. Here the concept of machine learning is extended. Machine learning are additionally classified into supervised and Association Rule) has been used for reducing time consumption in prediction of a particular disease. We have discussed about text mining technique and their applications. Another technique has also been studied from anthropometric measures which diverge according to age and gender. Using multilayer classifiers for disease prediction we can achieve high diagnosis accuracy and high Prediction, Genes, Data Mining, Text Missing Values, Hmv Pathway Based Approach: Through gene expression diseases can be predicted where samples of genes are sketched as specimen of tates for understanding the disease phenotype. The computation of gene expression estimate disease outcome. By using feature selection algorithm we can pick a batch of genes which are differently expressed. In network based approaches methods suspect that all cellular element that are owned to the identical topological, working or disease module have a inflated chance of having same disease. Greedy search is executed over (People of Information Network) to pinpoint a In this article we are going to discuss about 6 techniques for predicting disease. In the first technique diseases can be predicted by gene expression pattern. For selective distinctive genes selection algorithm classification 2 approaches are used network based approaches and pathway based approach and through hyper box representation diseases are classified [1]. The second technique is predicting the disease using st evaluate 11 missing data imputation techniques practically and then find the perfect method for grasping missing values from dataset is is enrolled. enrolled. For For @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 734

  2. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 supreme. PIN data is usually undependable and clattering and it also has a high false positive rate. In pathway based approaches biological pathways are unreliable and organised troupe of molecular interaction network. Pathway classification approach based on hyper- where given a microarray gene expression portrait and a number of biological pathways/gene classification exactness of each pathway/gene assessed by using only the adherent genes in the pathway. By using psoriasis and breast cancer datasets prediction accuracies are greater than 85% superior than sets of genes that are selected unplanned. Hyper box disease classification (Hyper DC) analyze disease specimen accurately when comparing with other prominent classification methodologies considering to SNR classification rates. Hyper DC show inflated SNR. Actual strength of Hyper DC rely power. Main advantage of Hyper DC is it is flexible [1]. 2.2. Hybrid Prediction Model with Missing Value Imputation: Exact prediction in huge number of missing values in dataset is a tough task. Many hybrid models to face this problem they have removed the missing instances from dataset which is commercially known as case deletion. Hybrid prediction model with Missing Value Imputation (HPM-MI) scrutinize different imputation technique by applying simple k-means clustering and use the best one to dataset. Missing values happen because of many reasons due to mistake in manual data, equipment mistakes, measurements. Missing values can cause many problems like loss of efficiency, convolutions managing and examining data. It may also lead to bias decisions. We have analyzed 11 Missing Value Imputation techniques they are case deletion, Most Common Method (MC), Concept Most Common (CMC), K-Nearest Neighbor (KNNI Imputation with K-Nearest Neighbor Means Clustering Imputation (KMI), Imputation with Fuzzy K-Means Clustering (FKMI), Support Vector Machines Imputations (SVMI), Singular Value Decomposition Imputation (SVDI), Local Least Squares Imputation (LLSI), Matrix Factorisation, Selecting best MVI method is based on accuracy it is attained. We have selected clustering as beginning for selection of best imputation technique. K Clustering seperates datasets into groups so that instances in one set are similar to each other and as dissimilar as possible from the objects in other dissimilar as possible from the objects in other supreme. PIN data is usually undependable and clattering and it also has a high false positive rate. In pathway based approaches biological pathways are unreliable and organised troupe of molecular CMC method has given less number of nstances in diabetes as well as in hepatitis dataset. Case deletion is best in hepatitis groups. CMC method has given less number of wrongly classified instances in diabetes as well as in hepatitis dataset. Case deletion is best in hepatitis dataset [2]. 2.3. CCAR: With Item set Constraints Class Association Rules (CAR's) are used to construct a classification model for prediction and narrate association between item set and class labels. The initiation of mining association rules with item constraints,3 major approach has been proposed. First method is post-processing method, first finds repeated item sets using a priori algorithm, second pre-processing method which filters out the ones which do not convince the item third approach is constrained item tries to assimilate the item set constraints into original mining process because it need frequent item set that pleases the constraints .In post processing approach CAR-mining algorithm is used. This strategy is not very efficient because all CAR's must be generated and frequently a large number of candidate CAR's need to be tested. Advantage of pre processing approach is the size of the filtered dataset is very much lesser than the actual dataset. So the mining time can be notably reduced. The authors manifested that their method is higher than the post processing method. In our proposed method the item set constraint is thrust as intense "inside" estimation as possible. Instead of using all rules, only rules which please the item set constraints are speed up the process. Proposed algorithm for mining CAR's is tree structure which includes only nodes having constrained item set and two theorems for soon trimming infrequent item 2.4. TEXT MINING: One of the major dominant entry point to scientific literature sources for biomedical research is pub which give entry to more than 24 million scientific literature. Fetching of relevant information from literature database fusing these information with experimental output is time taking and it also requires some careful attention so text mining is introduc Text mining reply to many research questions extending from the discovery of drug targets to drug repositioning. Definition of text mining by Marti Hearst is "the discovery by computer of new, previously unknown information from different written resources, to reveal otherwise 'hidden' meanings". The first and the foremost step in text mining is to fetch suitable textual foremost step in text mining is to fetch suitable textual athway level level -box principles disease disease set Constraints: (CAR's) are used to construct where given a microarray gene expression portrait and a number of biological pathways/gene set the classification exactness of each pathway/gene sets is a classification model for prediction and narrate set and class labels. The dherent genes in the initiation of mining association rules with item set constraints,3 major approach has been proposed. First processing method, first finds repeated priori algorithm, second approach is processing method which filters out the ones which do not convince the item set constraint, the third approach is constrained item set filtering which set constraints into original mining process because it needs to generate only the set that pleases the constraints .In post- pathway. By using psoriasis and breast cancer datasets prediction accuracies are greater than 85% superior than sets of genes that are selected unplanned. Hyper (Hyper DC) analyze disease when comparing with other prominent classification methodologies considering to SNR classification rates. Hyper DC show inflated ctual strength of Hyper DC rely on illustrative power. Main advantage of Hyper DC is it is flexible mining algorithm is used. This strategy is not very efficient because all CAR's must be generated and frequently a large number of o be tested. Advantage of pre- processing approach is the size of the filtered dataset is very much lesser than the actual dataset. So the mining time can be notably reduced. The authors manifested that their method is higher than the post- . In our proposed method the item set constraint is thrust as intense "inside" estimation as possible. Instead of using all rules, only rules Missing Value Exact prediction in huge number of missing values in dataset is a tough task. Many hybrid models to face this problem they have removed the missing instances from dataset which is commercially known as case deletion. Hybrid prediction model with Missing Value MI) scrutinize different imputation means clustering and use the best one to dataset. Missing values happen because of many reasons due to mistake in manual data, equipment mistakes, measurements. Missing values can cause many constraints are formed to Proposed algorithm for mining ree structure which includes only nodes set and two theorems for soon trimming infrequent item sets [3]. or or inaccurate inaccurate , convolutions in managing and examining data. It may also lead to bias decisions. We have analyzed 11 Missing Value they are case deletion, Most One of the major dominant entry point to scientific literature sources for biomedical research is pub Med hich give entry to more than 24 million scientific literature. Fetching of relevant information from literature database fusing these information with experimental output is time taking and it also requires some careful attention so text mining is introduced. Text mining reply to many research questions extending from the discovery of drug targets to drug repositioning. Definition of text mining by Marti Hearst is "the discovery by computer of new, previously unknown ferent written resources, to reveal otherwise 'hidden' meanings". The first and the Concept Most Common Nearest Neighbor (KNNI), Weighted (WKNN). K- (KMI), Imputation with (FKMI), Support Vector (SVMI), Singular Value (SVDI), Local Least (LLSI), Matrix Factorisation, Selecting best MVI method is based on accuracy it is attained. We have selected clustering as beginning for of best imputation technique. K-Means Clustering seperates datasets into groups so that instances in one set are similar to each other and as information information unknown unknown @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 735

  3. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 resources for a given subject of interest. This process is called as information retrieval. After IR the resulting document set can be examined by search algorithms for the occurrence of particular keywords of interest. For example a particular gene should be acknowledged in the text not only by its gene symbol, but also by the synonyms and previous names this is called as NER concept. After IR and NER technical algorithms can be used to discover links between concepts in the text. Recently the most used approaches to extract information from text are co occurrence based methods and Natural Processing (NLP) based methods. Comparison of these 2 approaches NLP based method has more advantages. Some of the applications of TM to biomedical problems are genome and gene expression annotation, drug repositioning, adverse events, electronic health records, domain specific databases[4].Proteins are the molecules that ease most biological process in a cell. Some of the text mining tools are Bio (Biological Research Assistant for Text Mining, eFIP (Extracting Functional impact of phosphorylati FACTA+(Finding Associated Conccepts with text analysis), Gene Ways, Hit Predict, In Print, I2D logo us Interaction Database), iHOP Hyperlinked Over Project), Molecular Interaction Database), Negatome, open DMAP, PCorral (Protein Corral), PIE the search, PPIExtractor, PPIfinder, PPLook, STRING[5]. 2.5Hyper triglyceride Anthropometric Measures: The excellent indicator for the prediction of hyper triglyceride mi a from anthropometric measures of body shape which remains a matter of debate. A total of 5517 subjects have participated in this cross sectional study (3675 women and 1842 men) aged 20 90 years. When the subject is standing the circumference of 8 particular sites were measured using a flexible non-elastic tape. The BMI wa calculated as weight in kilograms divided by square of the height in meters. Various circumference measurements are Forehead Circumference Neck Circumference (NC), Axilliary Circumference (AC), Chest Circumference Circumference (PC), Rib Circumference Circumference (WC), Hip Circumference and female data are divided seperately because the difference in body shape with aging may vary according to sex. Waist to Hip Ratio (WHR) were the strongest predictors of hyper triglyceride Indian men. WHtR (Waist to Height Ratio) was the (Waist to Height Ratio) was the resources for a given subject of interest. This process is called as information retrieval. After IR the document set can be examined by search algorithms for the occurrence of particular keywords of interest. For example a particular gene should be acknowledged in the text not only by its gene symbol, but also by the synonyms and previous names this is ed as NER concept. After IR and NER technical algorithms can be used to discover links between concepts in the text. Recently the most used approaches to extract information from text are co- occurrence based methods and Natural Processing ds. Comparison of these 2 approaches NLP based method has more advantages. Some of the applications of TM to biomedical problems are genome and gene expression annotation, drug repositioning, adverse events, electronic health best predictor of hyper triglyceride Rib to Forehead Circumference ratio (RFCR) was the best predictor in men. However in the age group of 20-50 years the best predictor o a were rib circumference and WHtR in 51 group in women and RFCR in 20 BMI in 51-90 year group men. The best predictor of hyper triglyceride mi a varies according to gender and age [6]. 2.6. HMV: Medical Framework: Decision Support System(DSS) help decision makers to collect and interpret information and construct a foundation for decision making . Medical DSS play an important role in medical by guiding doctors with clinical decisions. Data mining in medical area is a process of uncovering information from huge medical datasets, examine and use them for disease prediction. The proposed HMV overcome the disadvantages performance by using a group of seven classifiers. HMV framework removes noise from medical dataset by using clustering approach. The selection of optimal set of classifiers is an crucial step. The HMV satisfied 2 conditions accuracy and prediction diversity to achieve high quali ensemble framework is done on 2 heart disease dataset, 2 diabetes dataset, 2 liver disease dataset hepatitis dataset, 1 park in son’s these disease datasets HMV has produced highest accuracy in comparison with other Multilayer classifier is introduced to enhance the prediction. Predictions done by proposed DSS is parallel with prediction performed by panel of doctors. Heterogeneous classifier ensemble model is used by combining different type of classifier achieved a high level of diversity. Naive Bayes is probabilistic classifier which shows higher prediction accuracy and classification evaluation methods are decision trees, QDA (Quadratic Discriminant Analysis), LR Regression), SVM, and Bayesian evaluation method is KNN combining lazy and eager evaluation algorithm (hybrid approach) results in overcoming the limitation of both eager and lazy methods. Eager method may suffer of missing rule problem when there is no matching exists. In this scenario it adopts default prediction. Proposed framework is constructed on three modules. The first module is based on data acquisition and pre processing which gathers data from different data processing which gathers data from different data triglyceride mi a in women. Rib to Forehead Circumference ratio (RFCR) was the in men. However in the age group of 50 years the best predictor of hyper triglyceride mi a were rib circumference and WHtR in 51-90 year group in women and RFCR in 20-50 years group and 90 year group men. The best predictor of a varies according to gender and Decision Support Decision Support System(DSS) help decision makers to collect and interpret information and construct a foundation for decision making . Medical DSS play an important role in medical by guiding doctors with ta mining in medical area is a process of uncovering information from huge medical datasets, examine and use them for disease prediction. The proposed HMV overcome the disadvantages using a group of seven heterogeneous classifiers. HMV framework removes noise from medical dataset by using clustering approach. The selection of optimal set of classifiers is an crucial step. The HMV satisfied 2 conditions accuracy and prediction diversity to achieve high quality. The HMV ensemble framework is done on 2 heart disease dataset, 2 diabetes dataset, 2 liver disease dataset, 1 son’s disease dataset. In all these disease datasets HMV has produced highest ases[4].Proteins are the hidden hidden patterns patterns and and molecules that ease most biological process in a cell. Some of the text mining tools are Bio RAT (Biological Research Assistant for Text Mining, eFIP (Extracting Functional impact of phosphorylati on), of of conventional conventional ccepts with text Print, I2D (Inter us Interaction Database), iHOP (information Hyperlinked Over Project), Molecular Interaction Database), Negatome, open (Protein Corral), PIE the search, Poly search, PPIExtractor, PPIfinder, PPLook, STRING[5]. IMID(Integrated IMID(Integrated Hyper triglyceride mi mi a a From From with other classifiers. The excellent indicator for the prediction of hyper a from anthropometric measures of Multilayer classifier is introduced to enhance the prediction. Predictions done by proposed DSS is parallel with prediction performed by panel of doctors. Heterogeneous classifier ensemble model is used by combining different type of classifiers and achieved a high level of diversity. Naive Bayes (NB) probabilistic classifier which shows higher of debate. A total of 5517 subjects have participated in this cross- sectional study (3675 women and 1842 men) aged 20- 90 years. When the subject is standing the circumference of 8 particular sites were measured elastic tape. The BMI was calculated as weight in kilograms divided by square of the height in meters. Various circumference measurements are Forehead Circumference (FC), (NC), Axilliary Circumference classification. Eager evaluation methods are decision trees, QDA (Quadratic Discriminant Analysis), LR (Linear Bayesian classification. Lazy evaluation method is KNN combining lazy and eager (hybrid approach) results in overcoming the limitation of both eager and lazy methods. Eager method may suffer of missing rule s no matching exists. In this scenario it adopts default prediction. Proposed framework is constructed on three modules. The first module is based on data acquisition and pre (CC), (CC), Pelvic Pelvic ib Circumference (RC), Waist (WC), Hip Circumference (HC). Male and female data are divided seperately because the difference in body shape with aging may vary (WHR) were the triglyceride mi a in @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 736

  4. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 REFERENCES: 1.LingjianYanga,a,1,ChrysanthiAinalib,c,1,,Aristote lisKittasb,FrankO.Nestlec,LazarosG.Papageorgiou a,*,SophiaTsokab,*, "Pathway level disease data mining through hyper-box principles, JID:MBS, [m5G;November 10, 2014;15:25] 2.Archana Purwar1 and Sandeep Kumar Singh2 ,"Hybrid Prediction Model with missing value Imputation for medical data" Applications(2015) 3.Dang Nguyen a, b, Bay CCAR: An efficient method for association rules with item Engineering Applications of Artificial Intelligence 37(2015)115–124. 4.Wilco W. M. Fleurena, b, Wyn "Application of text mining in the biomedical domain", Methods 74 (2015) 97 5.Nikolas Papanikolaou, Georgios A. Pavlopoulos, The odosios The odosiou, Ioannis Iliopoulos *, "Protein–protein interaction predictions using text mining methods", Methods xxx (2014) xxx 6.Bum Ju Lee, Jong Yeol Kim*, "Indicators of hyper triglyceride mi a from anthropome measures based on data mining", Computers in Biology and Medicine 57 (2015) 201 7. Khan, 4Lubna Naseem Engineering Department, College of Electrical and Mechanical Engineering Sciences and Technology (NUST), Islamabad, Pakistan 4Shaheed Zulfiqar Ali Bhutto Medical University, PIMS, Islamabad, Pakistan, " medical decision support framework using multi layer classifiers for disease prediction", Computational Science (2016). (2016). warehouse and pre process them. In second module individual classifiers training is executed on the training set and they are used for predicting unknown class labels for test instances. The third module is prediction and evaluation of proposed ensemble framework. It is also performed on real time blood CP datasets which was taken from PIMS hospital to discover healthy and disease patients and the result of the samples again showed higher disease prediction accuracy it also guides practitioners and patients for the prediction of disease based on the symptoms of disease [7]. 3.COMPARITIVE STUDY: Predictions Advantage 1st prediction accuracy 2nd prediction 3rd prediction 4th prediction 5th prediction 6th prediction accuracy Table 1 com paritive study on various 4.CONCLUSION: Accuracy plays an requisite role in the medical field as it is related to the life of an individual. In the analysis of these six prediction techniques HMV: DSS using multilayer classifier is considered to be the best prediction technique among these because it has higher prediction accuracy and it also help and guide practitioners in predicting the disease. In second module individual classifiers training is executed on the training set and they are used for predicting unknown class labels for test instances. The third module is prediction and evaluation of proposed ensemble LingjianYanga,a,1,ChrysanthiAinalib,c,1,,Aristote lisKittasb,FrankO.Nestlec,LazarosG.Papageorgiou ,SophiaTsokab,*, "Pathway level disease data box principles, JID:MBS, 2014;15:25] n real time blood CP datasets which was taken from PIMS hospital to discover healthy and disease patients and the result of the samples again showed higher disease prediction accuracy it also guides practitioners and patients for based on the symptoms of Archana Purwar1 and Sandeep Kumar Singh2 Hybrid Prediction Model with missing value for medical data", Expert Systems with Vo a, b, n, BacLe c," CCAR: An efficient method for mining class association rules with item set constraints", Engineering Applications of Artificial Intelligence Disadvantage Disadvantage Time consuming Imbalanced classification Duplicate content High b, Wyn and Alkema a, c,*, consuming Imbalanced classification Duplicate content "Application of text mining in the biomedical domain", Methods 74 (2015) 97–106. Accuracy laou, Georgios A. Pavlopoulos, odosiou, Ioannis Iliopoulos *, protein interaction predictions using text mining methods", Methods xxx (2014) xxx–xxx Efficiency Efficient uncertain uncertain No cause effect relationship relationship No cause effect Simple Bum Ju Lee, Jong Yeol Kim*, "Indicators of a from anthropometric based on data mining", Computers in Biology and Medicine 57 (2015) 201–211. High Inflexible Inflexible paritive study on various predictions 1Saba Bashir, 2Usman Qamar, 3Farhan Hassan Saba Bashir, 2Usman Qamar, 3Farhan Hassan Khan, 4Lubna Naseem Engineering Department, College of Electrical and 1,2,3 Computer Accuracy plays an requisite role in the medical field the life of an individual. In the analysis of these six prediction techniques HMV: DSS using multilayer classifier is considered to be the best prediction technique among these because it has higher prediction accuracy and it also help and guide National University of Sciences and Technology (NUST), Islamabad, 4Shaheed Zulfiqar Ali Bhutto Medical University, PIMS, Islamabad, Pakistan, "HMV: A medical decision support framework using multi- disease prediction", Journal of @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 737

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