Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/141488
Title: Liver Disease Classification - An XAI Approach to Biomedical AI
Authors: Agbozo, E.
Balungu, D. M.
Issue Date: 2024
Publisher: Slovene Society Informatika
Citation: Agbozo, E., & Balungu, D. (2024). Liver Disease Classification - An XAI Approach to Biomedical AI. Informatica, 48(1), 79-90. https://doi.org/10.31449/inf.v48i1.4611
Abstract: Explosive amounts of biological and physiological data, including medical images, electroencephalograms, genomic information, and protein sequences, have been made available to us thanks to advances in biological and medical technologies. Understanding human health and disease is made easier by using this data for learning. Deep learning-based algorithms, which were developed from artificial neural networks, have significant potential for identifying patterns and extracting features from large amounts of complex data. However, these recent advancements involve blackbox models: algorithms that do not provide human-understandable explanations in support of their decisions. This limitation hampers the fairness, accountability and transparency of these models; the field of XAI tries to solve this problem providing human-understandable explanations for black-box models. This paper focuses on the requirement for XAI to be able to explain in detail the decisions made by an AI in a biomedical setting to the expert in the domain, e.g., the physician in the case of AI-based clinical decisions related to diagnosis, treatment, or prognosis of a disease. In this paper, we made use of the Indian Patient Liver Dataset (IPLD) collected from Andhra Pradesh region. The deep learning model with a 0.81 accuracy score (0.82 for the hyperparameter- tuned model) is built on Keras-Tensorflow and due to the imbalance in the target values, we integrated GANs as a means of oversampling the dataset. This study integrated the XAI concept of Shapley Values to shed light on the predictive results obtained by the liver disease detection model. © 2024 Slovene Society Informatika. All rights reserved.
Keywords: BIOMEDICAL SCIENCE
DATA-DRIVEN DECISION MAKING
DEEP LEARNING
EXPLAINABLE AI
PRESCRIPTIVE ANALYTICS
SHAPLEY VALUES
BIOELECTRIC PHENOMENA
BIOMEDICAL ENGINEERING
DEEP LEARNING
DIAGNOSIS
DISEASES
LEARNING SYSTEMS
MEDICAL IMAGING
NEURAL NETWORKS
BIOMEDICAL SCIENCE
BLACK BOX MODELLING
DATA DRIVEN DECISION
DATA-DRIVEN DECISION MAKING
DECISIONS MAKINGS
DEEP LEARNING
EXPLAINABLE AI
LIVER DISEASE
PRESCRIPTIVE ANALYTIC
SHAPLEY VALUE
DECISION MAKING
URI: http://elar.urfu.ru/handle/10995/141488
Access: info:eu-repo/semantics/openAccess
cc-by
SCOPUS ID: 85188317900
PURE ID: 55300701
ISSN: 1854-3871
0350-5596
DOI: 10.31449/inf.v48i1.4611
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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