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Information Seminar Paper

Title

MEDICAL DIAGNOSIS USING GRAPH-BASED FEATURE SELECTION

Pages

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Abstract

 MEDICAL DATASETS ARE OFTEN CLASSIFIED BY A LARGE NUMBER OF DISEASE MEASUREMENTS AND A RELATIVELY SMALL NUMBER OF PATIENT RECORDS. ALL THESE MEASUREMENTS (FEATURES) ARE NOT IMPORTANT OR IRRELEVANT/NOISY. THESE FEATURES MAY BE ESPECIALLY HARMFUL IN THE CASE OF RELATIVELY SMALL TRAINING SETS, WHERE THIS IRRELEVANCY AND REDUNDANCY IS HARDER TO EVALUATE. ON THE OTHER HAND, THIS EXTREME NUMBER OF FEATURES CARRIES THE PROBLEM OF MEMORY USAGE IN ORDER TO REPRESENT THE DATASET. CLASSIFICATION SYSTEMS HAVE BEEN WIDELY UTILIZED IN MEDICAL DOMAIN TO EXPLORE PATIENT’S DATA AND EXTRACT A PREDICTIVE MODEL. THIS MODEL HELPS PHYSICIANS TO IMPROVE THEIR PROGNOSIS, DIAGNOSIS OR TREATMENT PLANNING PROCEDURES. MODELS BASED ON DATA MINING AND MACHINE LEARNING TECHNIQUES HAVE BEEN DEVELOPED TO DETECT THE DISEASE EARLY OR ASSIST IN CLINICAL BREAST CANCER DIAGNOSES. MEDICAL DATASETS ARE OFTEN CLASSIFIED BY A LARGE NUMBER OF DISEASE MEASUREMENTS AND A RELATIVELY SMALL NUMBER OF PATIENT RECORDS. ALL THESE MEASUREMENTS (FEATURES) ARE NOT IMPORTANT OR IRRELEVANT/NOISY. THIS PAPER PRESENTS A GRAPH BASED FEATURE SELECTION METHOD FOR MEDICAL DATABASE CLASSIFICATION. SEX BENCHMARKED DATASETS, WHICH ARE AVAILABLE IN THE UCI MACHINE LEARNING REPOSITORY, HAVE BEEN USED IN THIS WORK. THE CLASSIFICATION ACCURACY SHOWS THAT THE PROPOSED METHOD IS CAPABLE OF PRODUCING GOOD RESULTS WITH FEWER FEATURES THAN THE ORIGINAL DATASETS.

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  • Cite

    APA: Copy

    Bozorgi, Hadi, & Sojoodi, Omid. (2015). MEDICAL DIAGNOSIS USING GRAPH-BASED FEATURE SELECTION. INTERNATIONAL CONFERENCE ON RESEARCH IN SCIENCE AND TECHNOLOGY. SID. https://sid.ir/paper/929692/en

    Vancouver: Copy

    Bozorgi Hadi, Sojoodi Omid. MEDICAL DIAGNOSIS USING GRAPH-BASED FEATURE SELECTION. 2015. Available from: https://sid.ir/paper/929692/en

    IEEE: Copy

    Hadi Bozorgi, and Omid Sojoodi, “MEDICAL DIAGNOSIS USING GRAPH-BASED FEATURE SELECTION,” presented at the INTERNATIONAL CONFERENCE ON RESEARCH IN SCIENCE AND TECHNOLOGY. 2015, [Online]. Available: https://sid.ir/paper/929692/en

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