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

机译:什么临床医生:语境化可解释的机器学习临床目的使用

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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 eld 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.
机译:将机器学习(ML)有效地与临床实践有效地建立临床医生的信任。解释性或ML模型的能力,以证明其结果和协助临床医生在合理化模型预测中,一般都被理解为建立信任至关重要。但是,ELD缺乏不同环境中可用解释的具体定义。为了确定可以催化在ML模型中建立信任的可解释性的具体方面,我们从两个不同的急性护理专业(Intenstive Care of Rentral Department)调查了临床医生。我们使用反馈表征何时可解释性有助于提高临床医生在ML模型中的信任。我们进一步确定了临床医生确定最相关和对临床实践有效翻译的最相关和至关重要的课程。最后,我们探讨了对临床解释性方法严格评估的具体指标。通过整合临床医生与ML研究人员之间的解释性的看法,我们希望促进卫生保健中ML系统的认可和更广泛的通过和持续使用。

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