Scoring systems are linear classification models that only require users to add or subtract a few small numbers in order to make a prediction. They are used for example by clinicians to assess the risk of medical conditions. This work focuses on our approach to implement an intuitive user interface to allow a clinician to generate such scoring systems interactively, based on the RiskSLIM machine learning library. We describe the technical architecture which allows a medical professional who is not specialised in developing and applying machine learning algorithms to create competitive transparent supersparse linear integer models in an interactive way. We demonstrate our prototype machine learning system in the nephrology domain, where doctors can interactively sub-select datasets to compute models, explore scoring tables that correspond to the learned models, and check the quality of the transparent solutions from a medical perspective.
翻译:分解系统是线性分类模型,只需要用户为预测而增减少数数字,例如临床医生用来评估医疗条件的风险。这项工作侧重于我们采用的方法,在风险SLIM机器学习图书馆的基础上,实施直观用户界面,使临床医生能够互动生成这种评分系统。我们描述了技术结构,使没有专门开发和应用机器学习算法的医学专业人员能够以交互方式开发和应用具有竞争力的透明超散线性整形模型。我们在肾脏学领域展示了我们的原型机器学习系统,医生可以在该系统中以交互的子选择数据集来计算模型,探索与所学模型相对应的评分表,并从医学角度检查透明解决方案的质量。