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Design of a Machine Learning System for Prediction of Chronic Wound Management Decisions

机译:慢性伤口管理决策预测机器学习系统的设计

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Chronic wounds affect 6.5 million Americans, are complex conditions to manage and cost $28-$32 billion annually. Although digital solutions exist for non-expert clinicians to accurately segment tissues, analyze affected tissues or efficiently document their wound assessment results, there exists a lack of decision support for non-expert clinicians who usually provide most wound assessments and care decisions at the point of care (POC). We designed a machine learning (ML) system that can accurately predict wound care decisions based on labeled wound image data. The care decisions we predict are based on guidelines for standard wound care and are labeled as: continue the treatment, request a change in treatment, or refer patient to a specialist. In this paper, we demonstrate how our final ML solution using XGboost (XGB) algorithm achieved on average an overall performance of F-1 = .782 using labels given by an expert and a novice decision maker. The key contribution of our research lies in the ability of the ML artifact to use only those wound features (predictors) that require less expertise for novice users when examining wounds to make standard of care decisions (predictions).
机译:慢性伤口影响了650万美国人,是每年管理和造成28-320亿美元的复杂条件。虽然非专家临床医生的数字解决方案适用于准确分段组织,但分析受影响的组织或有效地记录其伤口评估结果,缺乏对通常提供大多数伤口评估和关心决策的非专家临床医生的决策支持护理(POC)。我们设计了一种机器学习(ML)系统,可以基于标记的卷绕图像数据准确地预测伤口护理决策。我们预测的护理决策是基于标准伤口护理的准则,并标记为:继续治疗,要求改变治疗,或将患者提交给专家。在本文中,我们通过专家和新手决策者的标签平均使用XGBoost(XGB)算法的最终ML解决方案如何实现F-1 = .782的整体性能。我们的研究的主要贡献在于ML伪像仅使用那些伤口特征(预测器)的能力,这些功能在检查伤口时需要更少的新手用户的专业知识,以制定护理标准(预测)。

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