Explainable AI for Healthcare 5.0: Opportunities and Challenges

被引:128
作者
Saraswat, Deepti [1 ]
Bhattacharya, Pronaya [1 ]
Verma, Ashwin [1 ]
Prasad, Vivek Kumar [1 ]
Tanwar, Sudeep [1 ]
Sharma, Gulshan [2 ]
Bokoro, Pitshou N. [2 ]
Sharma, Ravi [3 ]
机构
[1] Nirma Univ, Inst Technol, Dept Comp Sci & Engn, Ahmadabad 382481, Gujarat, India
[2] Univ Johannesburg, Dept Elect Engn Technol, ZA-2006 Johannesburg, South Africa
[3] Univ Petr & Energy Studies, Ctr Interdisciplinary Res & Innovat, Dehra Dun 248001, Uttarakhand, India
关键词
Medical services; Artificial intelligence; Predictive models; Analytical models; Prediction algorithms; Medical diagnostic imaging; Deep learning; Explainable AI; healthcare; 50; metrics; deep learning; ARTIFICIAL-INTELLIGENCE; BLACK-BOX; NETWORKS; INTERNET; BEHAVIOR; REVIEWS;
D O I
10.1109/ACCESS.2022.3197671
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In the healthcare domain, a transformative shift is envisioned towards Healthcare 5.0. It expands the operational boundaries of Healthcare 4.0 and leverages patient-centric digital wellness. Healthcare 5.0 focuses on real-time patient monitoring, ambient control and wellness, and privacy compliance through assisted technologies like artificial intelligence (AI), Internet-of-Things (IoT), big data, and assisted networking channels. However, healthcare operational procedures, verifiability of prediction models, resilience, and lack of ethical and regulatory frameworks are potential hindrances to the realization of Healthcare 5.0. Recently, explainable AI (EXAI) has been a disruptive trend in AI that focuses on the explainability of traditional AI models by leveraging the decision-making of the models and prediction outputs. The explainability factor opens new opportunities to the black-box models and brings confidence in healthcare stakeholders to interpret the machine learning (ML) and deep learning (DL) models. EXAI is focused on improving clinical health practices and brings transparency to the predictive analysis, which is crucial in the healthcare domain. Recent surveys on EXAI in healthcare have not significantly focused on the data analysis and interpretation of models, which lowers its practical deployment opportunities. Owing to the gap, the proposed survey explicitly details the requirements of EXAI in Healthcare 5.0, the operational and data collection process. Based on the review method and presented research questions, systematically, the article unfolds a proposed architecture that presents an EXAI ensemble on the computerized tomography (CT) image classification and segmentation process. A solution taxonomy of EXAI in Healthcare 5.0 is proposed, and operational challenges are presented. A supported case study on electrocardiogram (ECG) monitoring is presented that preserves the privacy of local models via federated learning (FL) and EXAI for metric validation. The case-study is supported through experimental validation. The analysis proves the efficacy of EXAI in health setups that envisions real-life model deployments in a wide range of clinical applications.
引用
收藏
页码:84486 / 84517
页数:32
相关论文
共 50 条
[21]   Explainable AI for Industry 5.0: Vision, Architecture, and Potential Directions [J].
Trivedi, Chandan ;
Bhattacharya, Pronaya ;
Prasad, Vivek Kumar ;
Patel, Viraj ;
Singh, Arunendra ;
Tanwar, Sudeep ;
Sharma, Ravi ;
Aluvala, Srinivas ;
Pau, Giovanni ;
Sharma, Gulshan .
IEEE OPEN JOURNAL OF INDUSTRY APPLICATIONS, 2024, 5 :177-208
[22]   Developing a Transparent Diagnosis Model for Diabetic Retinopathy Using Explainable AI [J].
Shahzad, Tariq ;
Saleem, Muhammad ;
Farooq, Muhammad Sajid ;
Abbas, Sagheer ;
Khan, Muhammad Adnan ;
Ouahada, Khmaies .
IEEE ACCESS, 2024, 12 :149700-149709
[23]   Computer Audition for Healthcare: Opportunities and Challenges [J].
Qian, Kun ;
Li, Xiao ;
Li, Haifeng ;
Li, Shengchen ;
Li, Wei ;
Ning, Zuoliang ;
Yu, Shuai ;
Hou, Limin ;
Tang, Gang ;
Lu, Jing ;
Li, Feng ;
Duan, Shufei ;
Du, Chengcheng ;
Cheng, Yao ;
Wang, Yujun ;
Gan, Lin ;
Yamamoto, Yoshiharu ;
Schuller, Bjoern W. .
FRONTIERS IN DIGITAL HEALTH, 2020, 2
[24]   Explainable AI in Digestive Healthcare and Gastrointestinal Endoscopy [J].
Mascarenhas, Miguel ;
Mendes, Francisco ;
Martins, Miguel ;
Ribeiro, Tiago ;
Afonso, Joao ;
Cardoso, Pedro ;
Ferreira, Joao ;
Fonseca, Joao ;
Macedo, Guilherme .
JOURNAL OF CLINICAL MEDICINE, 2025, 14 (02)
[25]   Explainable AI for Lightweight Network Traffic Classification Using Depthwise Separable Convolutions [J].
Ghaleb, Mustafa ;
Hamdan, Mosab ;
Barnawi, Abdulaziz Y. ;
Gambo, Muhammad ;
Danasabe, Abubakar ;
Bello, Saheed ;
Habib, Aliyu .
IEEE OPEN JOURNAL OF THE COMPUTER SOCIETY, 2025, 6 :908-920
[26]   Explainable AI for Cyber-Physical Systems: Issues and Challenges [J].
Hoenig, Amber ;
Roy, Kaushik ;
Acquaah, Yaa Takyiwaa ;
Yi, Sun ;
Desai, Salil S. .
IEEE ACCESS, 2024, 12 :73113-73140
[27]   Explainable AI for 6G Use Cases: Technical Aspects and Research Challenges [J].
Wang, Shen ;
Qureshi, M. Atif ;
Miralles-Pechuan, Luis ;
Huynh-The, Thien ;
Gadekallu, Thippa Reddy ;
Liyanage, Madhusanka .
IEEE OPEN JOURNAL OF THE COMMUNICATIONS SOCIETY, 2024, 5 :2490-2540
[28]   Holding AI to Account: Challenges for the Delivery of Trustworthy AI in Healthcare [J].
Procter, Rob ;
Tolmie, Peter ;
Rouncefield, Mark .
ACM TRANSACTIONS ON COMPUTER-HUMAN INTERACTION, 2023, 30 (02)
[29]   Educating AI Software Engineers: Challenges and Opportunities [J].
Bublin, Mugdim ;
Schefer-Wenzl, Sigrid ;
Miladinovic, Igor .
MOBILITY FOR SMART CITIES AND REGIONAL DEVELOPMENT - CHALLENGES FOR HIGHER EDUCATION (ICL2021), VOL 2, 2022, 390 :241-251
[30]   The AI revolution in glaucoma: Bridging challenges with opportunities [J].
Li, Fei ;
Wang, Deming ;
Yang, Zefeng ;
Zhang, Yinhang ;
Jiang, Jiaxuan ;
Liu, Xiaoyi ;
Kong, Kangjie ;
Zhou, Fengqi ;
Tham, Clement C. ;
Medeiros, Felipe ;
Han, Ying ;
Grzybowski, Andrzej ;
Zangwill, Linda M. ;
Lam, Dennis S. C. ;
Zhang, Xiulan .
PROGRESS IN RETINAL AND EYE RESEARCH, 2024, 103