Literature DB >> 29241659

A novel method for predicting kidney stone type using ensemble learning.

Yassaman Kazemi1, Seyed Abolghasem Mirroshandel2.   

Abstract

The high morbidity rate associated with kidney stone disease, which is a silent killer, is one of the main concerns in healthcare systems all over the world. Advanced data mining techniques such as classification can help in the early prediction of this disease and reduce its incidence and associated costs. The objective of the present study is to derive a model for the early detection of the type of kidney stone and the most influential parameters with the aim of providing a decision-support system. Information was collected from 936 patients with nephrolithiasis at the kidney center of the Razi Hospital in Rasht from 2012 through 2016. The prepared dataset included 42 features. Data pre-processing was the first step toward extracting the relevant features. The collected data was analyzed with Weka software, and various data mining models were used to prepare a predictive model. Various data mining algorithms such as the Bayesian model, different types of Decision Trees, Artificial Neural Networks, and Rule-based classifiers were used in these models. We also proposed four models based on ensemble learning to improve the accuracy of each learning algorithm. In addition, a novel technique for combining individual classifiers in ensemble learning was proposed. In this technique, for each individual classifier, a weight is assigned based on our proposed genetic algorithm based method. The generated knowledge was evaluated using a 10-fold cross-validation technique based on standard measures. However, the assessment of each feature for building a predictive model was another significant challenge. The predictive strength of each feature for creating a reproducible outcome was also investigated. Regarding the applied models, parameters such as sex, acid uric condition, calcium level, hypertension, diabetes, nausea and vomiting, flank pain, and urinary tract infection (UTI) were the most vital parameters for predicting the chance of nephrolithiasis. The final ensemble-based model (with an accuracy of 97.1%) was a robust one and could be safely applied to future studies to predict the chances of developing nephrolithiasis. This model provides a novel way to study stone disease by deciphering the complex interaction among different biological variables, thus helping in an early identification and reduction in diagnosis time.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Classification technique; Data mining; Ensemble learning; Kidney disease; Kidney stone

Mesh:

Year:  2017        PMID: 29241659     DOI: 10.1016/j.artmed.2017.12.001

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  12 in total

Review 1.  Current and future applications of machine and deep learning in urology: a review of the literature on urolithiasis, renal cell carcinoma, and bladder and prostate cancer.

Authors:  Rodrigo Suarez-Ibarrola; Simon Hein; Gerd Reis; Christian Gratzke; Arkadiusz Miernik
Journal:  World J Urol       Date:  2019-11-05       Impact factor: 4.226

Review 2.  Artificial intelligence (AI) in urology-Current use and future directions: An iTRUE study.

Authors:  Milap Shah; Nithesh Naik; Bhaskar K Somani; B M Zeeshan Hameed
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Review 3.  Artificial Intelligence and Its Impact on Urological Diseases and Management: A Comprehensive Review of the Literature.

Authors:  B M Zeeshan Hameed; Aiswarya V L S Dhavileswarapu; Syed Zahid Raza; Hadis Karimi; Harneet Singh Khanuja; Dasharathraj K Shetty; Sufyan Ibrahim; Milap J Shah; Nithesh Naik; Rahul Paul; Bhavan Prasad Rai; Bhaskar K Somani
Journal:  J Clin Med       Date:  2021-04-26       Impact factor: 4.241

4.  Embedding Undersampling Rotation Forest for Imbalanced Problem.

Authors:  Huaping Guo; Xiaoyu Diao; Hongbing Liu
Journal:  Comput Intell Neurosci       Date:  2018-11-01

Review 5.  Artificial Intelligence in Clinical Decision Support: a Focused Literature Survey.

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Journal:  Yearb Med Inform       Date:  2019-08-16

6.  Automatic detection of calcium phosphate deposit plugs at the terminal ends of kidney tubules.

Authors:  Katrina Fernandez; Mark Korinek; Jon Camp; John Lieske; David Holmes
Journal:  Healthc Technol Lett       Date:  2019-12-06

Review 7.  The Ascent of Artificial Intelligence in Endourology: a Systematic Review Over the Last 2 Decades.

Authors:  B M Zeeshan Hameed; Milap Shah; Nithesh Naik; Bhavan Prasad Rai; Hadis Karimi; Patrick Rice; Peter Kronenberg; Bhaskar Somani
Journal:  Curr Urol Rep       Date:  2021-10-09       Impact factor: 3.092

Review 8.  Role of Artificial Intelligence in Kidney Disease.

Authors:  Qiongjing Yuan; Haixia Zhang; Tianci Deng; Shumei Tang; Xiangning Yuan; Wenbin Tang; Yanyun Xie; Huipeng Ge; Xiufen Wang; Qiaoling Zhou; Xiangcheng Xiao
Journal:  Int J Med Sci       Date:  2020-04-06       Impact factor: 3.738

9.  A Retrospective Study on Risk Factors for Urinary Tract Infection in Patients with Intracranial Cerebral Hemorrhage.

Authors:  Jingsong Mu; Chaomin Ni; Ming Wu; Wenxiang Fan; Zheng Liu; Fengjuan Xu; Lei Liu
Journal:  Biomed Res Int       Date:  2020-01-28       Impact factor: 3.411

10.  Prediction of the occurrence of calcium oxalate kidney stones based on clinical and gut microbiota characteristics.

Authors:  Liyuan Xiang; Xi Jin; Yu Liu; Yucheng Ma; Zhongyu Jian; Zhitao Wei; Hong Li; Yi Li; Kunjie Wang
Journal:  World J Urol       Date:  2021-08-24       Impact factor: 4.226

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