Assisting clinical practice with fuzzy probabilistic decision trees
Emma L. Ambags, Giulia Capitoli, Vincenzo L' Imperio, Michele, Provenzano, Marco S. Nobile, Pietro Li\`o

TL;DR
This paper introduces FPT, a fuzzy probabilistic decision tree method that enhances interpretability and uncertainty estimation in clinical decision support, demonstrated on thyroid and kidney disease datasets.
Contribution
The paper presents a novel fuzzy probabilistic decision tree approach that improves interpretability and uncertainty estimation in clinical decision support systems.
Findings
FPT provides interpretable support for clinicians.
Fuzzy variables capture nuanced information lost in traditional trees.
FPT reduces misdiagnoses through uncertainty estimates.
Abstract
The need for fully human-understandable models is increasingly being recognised as a central theme in AI research. The acceptance of AI models to assist in decision making in sensitive domains will grow when these models are interpretable, and this trend towards interpretable models will be amplified by upcoming regulations. One of the killer applications of interpretable AI is medical practice, which can benefit from accurate decision support methodologies that inherently generate trust. In this work, we propose FPT, (MedFP), a novel method that combines probabilistic trees and fuzzy logic to assist clinical practice. This approach is fully interpretable as it allows clinicians to generate, control and verify the entire diagnosis procedure; one of the methodology's strength is the capability to decrease the frequency of misdiagnoses by providing an estimate of uncertainties and…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Bayesian Modeling and Causal Inference · Machine Learning in Healthcare
