通过使用直观可视化和人机交互将现代机器学习带入临床实践

Richard Osuala, Jieyi Li, Ognjen Arandjelovic
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引用次数: 2

摘要

医疗保健提供者系统收集医疗数据(诊断、入院紧急情况、血液检测结果、扫描等)的趋势日益增多,为现代数据挖掘、模式识别和机器学习算法的应用提供了前所未有的机会。最终目标总是直接或间接地改善结果。尽管最近在这一领域的研究取得了成功,但使所开发的模型可供医学专业人员(而不是计算机科学家或统计学家)使用的一个主要障碍在很大程度上仍未得到解决。然而,越来越多的证据表明,理解和轻松使用新技术的能力是决定目标用户(医生、护士和患者等)可能被广泛采用的一个主要因素。在这项工作中,我们解决了这一技术差距。特别是,我们描述了一种便携式、基于网络的界面,该界面允许医疗保健专业人员与最近开发的机器学习和数据驱动的预测算法进行交互。我们的应用程序接口了一个统计疾病进展模型,并以直观易懂的方式显示其预测。不同类型的几何基元及其视觉特性(如大小或颜色)用于表示抽象量,如概率密度函数、相对概率的变化率和一系列其他相关统计数据,卫生保健专业人员可以使用这些统计数据来探索患者的风险因素或提供个性化的、,证据和数据驱动的激励措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bringing Modern Machine Learning into Clinical Practice Through the Use of Intuitive Visualization and Human–Computer Interaction

The increasing trend of systematic collection of medical data (diagnoses, hospital admission emergencies, blood test results, scans, etc) by healthcare providers offers an unprecedented opportunity for the application of modern data mining, pattern recognition, and machine learning algorithms. The ultimate aim is invariably that of improving outcomes, be it directly or indirectly. Notwithstanding the successes of recent research efforts in this realm, a major obstacle of making the developed models usable by medical professionals (rather than computer scientists or statisticians) remains largely unaddressed. Yet, a mounting amount of evidence shows that the ability to understand and easily use novel technologies is a major factor governing how widely adopted by the target users (doctors, nurses, and patients, amongst others) they are likely to be. In this work we address this technical gap. In particular, we describe a portable, web-based interface that allows healthcare professionals to interact with recently developed machine learning and data driven prognostic algorithms. Our application interfaces a statistical disease progression model and displays its predictions in an intuitive and readily understandable manner. Different types of geometric primitives and their visual properties (such as size or colour) are used to represent abstract quantities such as probability density functions, the rate of change of relative probabilities, and a series of other relevant statistics which the heathcare professional can use to explore patients’ risk factors or provide personalized, evidence and data driven incentivization to the patient.

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