Diagnosis of Acute Poisoning Using Explainable Artificial Intelligence
Michael Chary, Ed W Boyer, Michele M Burns

TL;DR
This paper presents Tak, a probabilistic logic-based AI system for diagnosing acute poisoning, which offers transparency and performs comparably to humans on simple and intermediate cases, outperforming decision trees.
Contribution
The study introduces a transparent probabilistic logic network for toxicology diagnosis, bridging the gap between AI explainability and clinical decision-making.
Findings
Tak performs comparably to humans on straightforward cases.
Tak outperforms decision tree classifiers at all difficulty levels.
Probabilistic logic enhances AI transparency in healthcare.
Abstract
Medical toxicology is the clinical specialty that treats the toxic effects of substances, be it an overdose, a medication error, or a scorpion sting. The volume of toxicological knowledge and research has, as with other medical specialties, outstripped the ability of the individual clinician to entirely master and stay current with it. The application of machine learning techniques to medical toxicology is challenging because initial treatment decisions are often based on a few pieces of textual data and rely heavily on prior knowledge. ML techniques often do not represent knowledge in a way that is transparent for the physician, raising barriers to usability. Rule-based systems and decision tree learning are more transparent approaches, but often generalize poorly and require expert curation to implement and maintain. Here, we construct a probabilistic logic network to represent a…
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