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Clinically Applicable Machine Learning Approaches to Identify Attributes of Chronic Kidney Disease (CKD) for Use in Low-Cost Diagnostic Screening

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TLDR
In this paper, the authors developed machine learning models using selective key pathological categories to identify clinical test attributes that will aid in accurate early diagnosis of chronic kidney disease (CKD).
Abstract
Objective: Chronic kidney disease (CKD) is a major public health concern worldwide. High costs of late-stage diagnosis and insufficient testing facilities can contribute to high morbidity and mortality rates in CKD patients, particularly in less developed countries. Thus, early diagnosis aided by vital parameter analytics using affordable computer-aided diagnosis could not only reduce diagnosis costs but improve patient management and outcomes. Methods: In this study, we developed machine learning models using selective key pathological categories to identify clinical test attributes that will aid in accurate early diagnosis of CKD. Such an approach will save time and costs for diagnostic screening. We have also evaluated the performance of several classifiers with k-fold cross-validation on optimized datasets derived using these selected clinical test attributes. Results: Our results suggest that the optimized datasets with important attributes perform well in diagnosis of CKD using our proposed machine learning models. Furthermore, we evaluated clinical test attributes based on urine and blood tests along with clinical parameters that have low costs of acquisition. The predictive models with the optimized and pathologically categorized attributes set yielded high levels of CKD diagnosis accuracy with random forest (RF) classifier being the best performing. Conclusions: Our machine learning approach has yielded effective predictive analytics for CKD screening which can be developed as a resource to facilitate improved CKD screening for enhanced and timely treatment plans.

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Application of explainable artificial intelligence for healthcare: A systematic review of the last decade (2011-2022)

TL;DR: In this paper , a review of 99 Q1 articles covering explainable artificial intelligence (XAI) techniques is presented, including SHAP, LIME, GradCAM, LRP, Fuzzy classifier, EBM, CBR, and others.
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Performance analysis of cost-sensitive learning methods with application to imbalanced medical data

TL;DR: This research focuses on developing robust cost-sensitive classifiers by modifying the objective functions of some well-known algorithms, such as logistic regression, decision tree, extreme gradient boosting, and random forest, which are then used to efficiently predict medical diagnosis.
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A Machine Learning Method with Filter-Based Feature Selection for Improved Prediction of Chronic Kidney Disease

TL;DR: The proposed approach to effectively detect CKD by combining the information-gain-based feature selection technique and a cost-sensitive adaptive boosting (AdaBoost) classifier has produced an effective predictive model for CKD diagnosis and could be applied to more imbalanced medical datasets for effective disease detection.
Journal ArticleDOI

Explainable AI for clinical and remote health applications: a survey on tabular and time series data

TL;DR: A review of the literature in the last 5 years, illustrating the type of generated explanations and the efforts provided to evaluate their relevance and quality, is provided in this paper , where the authors identify clinical validation, consistency assessment, objective and standardised quality evaluation, and human-centered quality assessment as key features to ensure effective explanations for the end users.
Journal ArticleDOI

Predict, diagnose, and treat chronic kidney disease with machine learning: a systematic literature review

TL;DR: In this article , a systematic review aimed at assessing how artificial intelligence (AI) including machine learning (ML) techniques have been deployed to predict, diagnose, and treat chronic kidney disease (CKD).
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