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Intricacies of Human-AI Interaction in Dynamic Decision-Making for Precision Oncology: A Case Study in Response-Adaptive Radiotherapy
2
Zitationen
22
Autoren
2024
Jahr
Abstract
Human-AI interaction depends on the complex interrelationship between expert's prior knowledge and preferences, patient's state, disease site, treatment modality, model transparency, and AI's learned behavior and biases. The collaborative decision-making process can be summarized as follows: (i) some clinicians may not believe in an AI system, completely disregarding its recommendation, (ii) some clinicians may believe in the AI system but will critically analyze its recommendations on a case-by-case basis; (iii) when a clinician finds that the AI recommendation indicates the possibility for better outcomes they will adjust their decisions accordingly; and (iv) When a clinician finds that the AI recommendation indicate a worse possible outcome they will disregard it and seek their own alternative approach.
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Autoren
- Dipesh Niraula
- Kyle C. Cuneo
- Ivo D. Dinov
- Brian D. Gonzalez
- Jamalina Jamaluddin
- Jionghua Jin
- Yi Luo
- M.M. Matuszak
- Randall K. Ten Haken
- Alex K. Bryant
- Thomas J. Dilling
- Michael Dykstra
- Jessica M. Frakes
- Casey Liveringhouse
- Sean R. Miller
- Matthew N. Mills
- Russell F. Palm
- S.N. Regan
- Anupam Rishi
- Javier F. Torres–Roca
- Ya-Yu Tsai
- Issam El Naqa