Exploring the Capabilities of a Lightweight CNN Model in Accurately Identifying Renal Abnormalities: Cysts, Stones, and Tumors, Using LIME and SHAP

Author:

Bhandari Mohan1ORCID,Yogarajah Pratheepan2ORCID,Kavitha Muthu Subash3ORCID,Condell Joan2ORCID

Affiliation:

1. Department of Science and Technology, Samriddhi College, Bhaktapur 44800, Nepal

2. School of Computing, Engineering and Intelligent System, Ulster University, Londonderry BT48 7JL, UK

3. School of Information and Data Sciences, Nagasaki University, Nagasaki 8528521, Japan

Abstract

Kidney abnormality is one of the major concerns in modern society, and it affects millions of people around the world. To diagnose different abnormalities in human kidneys, a narrow-beam x-ray imaging procedure, computed tomography, is used, which creates cross-sectional slices of the kidneys. Several deep-learning models have been successfully applied to computer tomography images for classification and segmentation purposes. However, it has been difficult for clinicians to interpret the model’s specific decisions and, thus, creating a “black box” system. Additionally, it has been difficult to integrate complex deep-learning models for internet-of-medical-things devices due to demanding training parameters and memory-resource cost. To overcome these issues, this study proposed (1) a lightweight customized convolutional neural network to detect kidney cysts, stones, and tumors and (2) understandable AI Shapely values based on the Shapley additive explanation and predictive results based on the local interpretable model-agnostic explanations to illustrate the deep-learning model. The proposed CNN model performed better than other state-of-the-art methods and obtained an accuracy of 99.52 ± 0.84% for K = 10-fold of stratified sampling. With improved results and better interpretive power, the proposed work provides clinicians with conclusive and understandable results.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference66 articles.

1. Pyeritz, R.E. (2023). Emery and Rimoin’s Principles and Practice of Medical Genetics and Genomics, Elsevier.

2. Epidemiology of chronic kidney disease: An update 2022;Kovesdy;Kidney Int. Suppl.,2022

3. Maynar, J., Barrasa, H., Martin, A., Usón, E., and Fonseca, F. (2023). The Sepsis Codex-E-Book, Elsevier Health Sciences.

4. Trends in insulin resistance: Insights into mechanisms and therapeutic strategy;Li;Signal Transduct. Target. Ther.,2022

5. Duplex Kidney Anomalies and Associated Pathologies in Children: A Single-Center Retrospective Review;Yener;Cureus,2022

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