>
Fa   |   Ar   |   En
   Prediction of Breast Cancer Survival by Machine Learning Methods: An Application of Multiple Imputation  
   
نویسنده lotfnezhad afshar hadi ,jabbari nasrollah ,khalkhali hamid reza ,esnaashari omid
منبع iranian journal of public health - 2021 - دوره : 50 - شماره : 3 - صفحه:598 -605
چکیده    Background: the low breast cancer survival rates in less developed countries are critical. the machine learning techniques predict cancers survival with high accuracy. missing data are the most important limitation for using the highest potential of these techniques to predict cancers survival. multiple imputation (mi) was implemented and analyzed in detail to impute the missing data of a breast cancer dataset. methods: the dataset was from the omid treatment and research center urmia, iran between jan 2006 and dec 2012 and had information from 856 women. the algorithms such as c5 and repeated incremental pruning to produce error reduction were applied on the imputed versions of the original dataset and the non-imputed dataset to predict and extract clinical rules, respectively. results: the findings showed the performance of c5 in all the evaluation criteria including accuracy (84.42%), sensitivity (92.21%), specificity (64%), kappa statistic (59.06%), and the area under the receiver operator characteristic (roc) curve (0.84), was improved after imputation. conclusion: the dataset of the present study met the requirements for using the multiple imputation method. the extracted rules after the application of mi were more comprehensive and contained knowledge that is more clinical. however, the clinical value of the extracted rules after filling in the missing data did not noticeably increase.
کلیدواژه Breast neoplasms; Survival; Observer variation; Imputation; Machine learning
آدرس urmia university of medical sciences, school of paramedical, department of health information technology, Iran, urmia university of medical sciences, solid tumor research center, school of paramedical, department of medical physics, Iran, urmia university of medical sciences, patient safety research center, school of medicine, department of biostatistics and epidemiology, Iran, omid treatment and research center, Iran
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved