Explainable Artificial Intelligence for Medical Applications: A Review

Type: Review

Publication Date: 2024-11-15

Citations: 0

DOI: https://doi.org/10.48550/arxiv.2412.01829

Abstract

The continuous development of artificial intelligence (AI) theory has propelled this field to unprecedented heights, owing to the relentless efforts of scholars and researchers. In the medical realm, AI takes a pivotal role, leveraging robust machine learning (ML) algorithms. AI technology in medical imaging aids physicians in X-ray, computed tomography (CT) scans, and magnetic resonance imaging (MRI) diagnoses, conducts pattern recognition and disease prediction based on acoustic data, delivers prognoses on disease types and developmental trends for patients, and employs intelligent health management wearable devices with human-computer interaction technology to name but a few. While these well-established applications have significantly assisted in medical field diagnoses, clinical decision-making, and management, collaboration between the medical and AI sectors faces an urgent challenge: How to substantiate the reliability of decision-making? The underlying issue stems from the conflict between the demand for accountability and result transparency in medical scenarios and the black-box model traits of AI. This article reviews recent research grounded in explainable artificial intelligence (XAI), with an emphasis on medical practices within the visual, audio, and multimodal perspectives. We endeavour to categorise and synthesise these practices, aiming to provide support and guidance for future researchers and healthcare professionals.

Locations

  • arXiv (Cornell University) - View - PDF

Similar Works

Action Title Year Authors
+ Explainable Artificial Intelligence for Medical Applications: A Review 2024 Qiyang Sun
Alican Akman
Björn Schüller
+ A Survey on Explainable Artificial Intelligence (XAI): Toward Medical XAI 2020 Erico Tjoa
Cuntai Guan
+ Explainable AI applications in the Medical Domain: a systematic review 2023 Nicoletta Prentzas
Antonis Kakas
Constantinos S. Pattichis
+ A Brief Review of Explainable Artificial Intelligence in Healthcare 2023 Zahra Sadeghi
Roohallah Alizadehsani
Mehmet Akif Çifçi
Samina Kausar
Rizwan Rehman
Priyakshi Mahanta
Pranjal Kumar Bora
Ammar Almasri
Rami S. Alkhawaldeh
Sadiq Hussain
+ PDF Chat A Brief Review of Explainable Artificial Intelligence in Healthcare 2023 Zahra Sadeghi
Roohallah Alizadehsani
Mehmet Akif Çifçi
Samina Kausar
Rizwan Rehman
Priyakshi Mahanta
Pranjal Kumar Bora
Ammar Almasri
Rami S. Alkhawaldeh
Sadiq Hussain
+ Achievements and Challenges in Explaining Deep Learning based Computer-Aided Diagnosis Systems 2020 Adriano Lucieri
Muhammad Naseer Bajwa
Andreas Dengel
Sheraz Ahmed
+ PDF Chat A Review on Explainable Artificial Intelligence for Healthcare: Why, How, and When? 2023 Subrato Bharati
M. Rubaiyat Hossain Mondal
Prajoy Podder
+ A Practical guide on Explainable AI Techniques applied on Biomedical use case applications 2021 Adrien Bennetot
Ivan Donadello
Ayoub El Qadi
Mauro Dragoni
Thomas Frossard
B.J. Wagner
Anna Saranti
Silvia Tulli
Maria Trocan
Raja Chatila
+ PDF Chat A Practical Guide on Explainable Ai Techniques Applied on Biomedical Use Case Applications 2022 Adrien Bennetot
Ivan Donadello
Ayoub El Qadi
Mauro Dragoni
Thomas Frossard
B.J. Wagner
Anna Saranti
Silvia Tulli
Maria Trocan
Raja Chatila
+ XAI Renaissance: Redefining Interpretability in Medical Diagnostic Models 2023 Sujith Kumar Mandala
+ Unbox the Black-box for the Medical Explainable AI via Multi-modal and Multi-centre Data Fusion: A Mini-Review, Two Showcases and Beyond 2021 Guang Yang
Qinghao Ye
Jun Xia
+ PDF Chat Explainable AI in Orthopedics: Challenges, Opportunities, and Prospects 2023 Soheyla Amirian
Luke Carlson
Matthew F. Gong
Ines Lohse
Kurt R. Weiss
Johannes F. Plate
Ahmad P. Tafti
+ Why we do need Explainable AI for Healthcare 2022 Giovanni Cinà
Tabea E. Röber
Rob Goedhart
Ş. İlker Birbil
+ Designing Interpretable ML System to Enhance Trustworthy AI in Healthcare: A Systematic Review of the Last Decade to A Proposed Robust Framework 2023 Elham Nasarian
Roohallah Alizadehsani
U. Rajendra Acharyac
Diana Tsui
+ Explainable AI for clinical and remote health applications: a survey on tabular and time series data 2022 Flavio Di Martino
Franca Delmastro
+ PDF Chat Explainable AI for clinical and remote health applications: a survey on tabular and time series data 2022 Flavio Di Martino
Franca Delmastro
+ Explainable AI in Orthopedics: Challenges, Opportunities, and Prospects 2023 Soheyla Amirian
Luke Carlson
Matthew F. Gong
Ines Lohse
Kurt R. Weiss
Johannes F. Plate
Ahmad P. Tafti
+ Guidelines and Evaluation of Clinical Explainable AI in Medical Image Analysis 2022 Weina Jin
Xiaoxiao Li
Mostafa Fatehi
Ghassan Hamarneh
+ A Theoretical Framework for AI Models Explainability with Application in Biomedicine 2022 Matteo Rizzo
Alberto Veneri
Andrea Albarelli
Claudio Lucchese
Cristina Conati
+ PDF Chat Interpretable Medical Imagery Diagnosis with Self-Attentive Transformers: A Review of Explainable AI for Health Care 2024 Tin Lai

Works That Cite This (0)

Action Title Year Authors

Works Cited by This (0)

Action Title Year Authors