LGMLMay 13, 2019

What Clinicians Want: Contextualizing Explainable Machine Learning for Clinical End Use

arXiv:1905.05134v2599 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the lack of usable explanations for clinicians in healthcare, though it is incremental as it builds on existing explainability research.

The study surveyed clinicians to identify specific aspects of explainability that build trust in machine learning models for clinical use, finding concrete metrics and relevant explanation classes to improve adoption.

Translating machine learning (ML) models effectively to clinical practice requires establishing clinicians' trust. Explainability, or the ability of an ML model to justify its outcomes and assist clinicians in rationalizing the model prediction, has been generally understood to be critical to establishing trust. However, the field suffers from the lack of concrete definitions for usable explanations in different settings. To identify specific aspects of explainability that may catalyze building trust in ML models, we surveyed clinicians from two distinct acute care specialties (Intenstive Care Unit and Emergency Department). We use their feedback to characterize when explainability helps to improve clinicians' trust in ML models. We further identify the classes of explanations that clinicians identified as most relevant and crucial for effective translation to clinical practice. Finally, we discern concrete metrics for rigorous evaluation of clinical explainability methods. By integrating perceptions of explainability between clinicians and ML researchers we hope to facilitate the endorsement and broader adoption and sustained use of ML systems in healthcare.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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