TY - GEN
T1 - HAIformer
T2 - 27th European Conference on Artificial Intelligence, ECAI 2024
AU - Zhao, Xuehan
AU - Liu, Jiaqi
AU - Zhang, Yao
AU - Yu, Zhiwen
AU - Guo, Bin
N1 - Publisher Copyright:
© 2024 The Authors.
PY - 2024/10/16
Y1 - 2024/10/16
N2 - Online disease diagnosis, gathering the patients' symptoms and making diagnoses through online dialogue, grows rapidly worldwide.Manual-based approach, e.g., Haodaifu, employs real-world doctors, providing high-quality but high-cost medical services.In contrast, machine-based approach, e.g., 01bot, that utilizes machine learning models can make automatic diagnosis but lacks reliable accuracy.While some work has enabled human-AI collaboration in disease diagnosis, their collaboration pattern is simple and needs to be further improved.Therefore, we aim to introduce a doctor-enhanced and low-cost human-AI collaboration pattern.There are two key challenges.1) How to utilize expert knowledge in doctor feedback to enhance AI's capability? 2) How to design a collaboration workflow to achieve a low-cost doctor workload while ensuring accuracy? To address the above challenges, we propose the Human-AI collaboration framework for disease diagnosis via doctor-enhanced transformer, called HAIformer.Specifically, to enhance AI's capability, we propose a machine module that leverages doctors' medical knowledge through doctor-enhanced attention, using a graph attention-based matrix; to reduce doctor workload, we propose an activation module that uses two units in a cascading manner for human-AI allocation.Experiments on four real-world datasets show that HAIformer can achieve up to 91.2% accuracy with only 18.9% human effort and one-third of dialogue turns.Further real-world clinic study highlights its advantages in practical applications.
AB - Online disease diagnosis, gathering the patients' symptoms and making diagnoses through online dialogue, grows rapidly worldwide.Manual-based approach, e.g., Haodaifu, employs real-world doctors, providing high-quality but high-cost medical services.In contrast, machine-based approach, e.g., 01bot, that utilizes machine learning models can make automatic diagnosis but lacks reliable accuracy.While some work has enabled human-AI collaboration in disease diagnosis, their collaboration pattern is simple and needs to be further improved.Therefore, we aim to introduce a doctor-enhanced and low-cost human-AI collaboration pattern.There are two key challenges.1) How to utilize expert knowledge in doctor feedback to enhance AI's capability? 2) How to design a collaboration workflow to achieve a low-cost doctor workload while ensuring accuracy? To address the above challenges, we propose the Human-AI collaboration framework for disease diagnosis via doctor-enhanced transformer, called HAIformer.Specifically, to enhance AI's capability, we propose a machine module that leverages doctors' medical knowledge through doctor-enhanced attention, using a graph attention-based matrix; to reduce doctor workload, we propose an activation module that uses two units in a cascading manner for human-AI allocation.Experiments on four real-world datasets show that HAIformer can achieve up to 91.2% accuracy with only 18.9% human effort and one-third of dialogue turns.Further real-world clinic study highlights its advantages in practical applications.
UR - http://www.scopus.com/inward/record.url?scp=85213335185&partnerID=8YFLogxK
U2 - 10.3233/FAIA240653
DO - 10.3233/FAIA240653
M3 - 会议稿件
AN - SCOPUS:85213335185
T3 - Frontiers in Artificial Intelligence and Applications
SP - 1495
EP - 1502
BT - ECAI 2024 - 27th European Conference on Artificial Intelligence, Including 13th Conference on Prestigious Applications of Intelligent Systems, PAIS 2024, Proceedings
A2 - Endriss, Ulle
A2 - Melo, Francisco S.
A2 - Bach, Kerstin
A2 - Bugarin-Diz, Alberto
A2 - Alonso-Moral, Jose M.
A2 - Barro, Senen
A2 - Heintz, Fredrik
PB - IOS Press BV
Y2 - 19 October 2024 through 24 October 2024
ER -