Precision Radiotherapy via Information Integration of Expert Human
Knowledge and AI Recommendation to Optimize Clinical Decision Making
- URL: http://arxiv.org/abs/2202.04565v1
- Date: Wed, 9 Feb 2022 16:56:22 GMT
- Title: Precision Radiotherapy via Information Integration of Expert Human
Knowledge and AI Recommendation to Optimize Clinical Decision Making
- Authors: Wenbo Sun, Dipesh Niraula, Issam El Naqa, Randall K Ten Haken, Ivo D
Dinov, Kyle Cuneo, Judy Jin
- Abstract summary: This paper lays out a systematic method to integrate expert human knowledge with AI recommendations for optimizing clinical decision making.
The proposed method is demonstrated in a comprehensive dataset where patient-specific information and treatment outcomes are prospectively collected during radiotherapy of $67$ non-small cell lung cancer patients.
- Score: 4.843028858507964
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the precision medicine era, there is a growing need for precision
radiotherapy where the planned radiation dose needs to be optimally determined
by considering a myriad of patient-specific information in order to ensure
treatment efficacy. Existing artificial-intelligence (AI) methods can recommend
radiation dose prescriptions within the scope of this available information.
However, treating physicians may not fully entrust the AI's recommended
prescriptions due to known limitations or when the AI recommendation may go
beyond physicians' current knowledge. This paper lays out a systematic method
to integrate expert human knowledge with AI recommendations for optimizing
clinical decision making. Towards this goal, Gaussian process (GP) models are
integrated with deep neural networks (DNNs) to quantify the uncertainty of the
treatment outcomes given by physicians and AI recommendations, respectively,
which are further used as a guideline to educate clinical physicians and
improve AI models performance. The proposed method is demonstrated in a
comprehensive dataset where patient-specific information and treatment outcomes
are prospectively collected during radiotherapy of $67$ non-small cell lung
cancer patients and retrospectively analyzed.
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