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PECLIDES神经:一种用于神经系统疾病的可个性化定制的临床决策支持系统。

PECLIDES Neuro: A Personalisable Clinical Decision Support System for Neurological Diseases.

作者信息

Müller Tamara T, Lio Pietro

机构信息

Computer Laboratory, Department of Computer Science and Technology, University of Cambridge, Cambridge, United Kingdom.

出版信息

Front Artif Intell. 2020 Apr 21;3:23. doi: 10.3389/frai.2020.00023. eCollection 2020.

Abstract

Neurodegenerative diseases such as Alzheimer's and Parkinson's impact millions of people worldwide. Early diagnosis has proven to greatly increase the chances of slowing down the diseases' progression. Correct diagnosis often relies on the analysis of large amounts of patient data, and thus lends itself well to support from machine learning algorithms, which are able to learn from past diagnosis and see clearly through the complex interactions of a patient's symptoms and data. Unfortunately, many contemporary machine learning techniques fail to reveal details about how they reach their conclusions, a property considered fundamental when providing a diagnosis. Here we introduce our Personalisable Clinical Decision Support System (PECLIDES), an algorithmic process formulated to address this specific fault in diagnosis detection. PECLIDES provides a clear insight into the decision-making process leading to a diagnosis, making it a gray box model. Our algorithm enriches the fundamental work of Masheyekhi and Gras in data integration, personal medicine, usability, visualization, and interactivity. Our decision support system is an operation of translational medicine. It is based on random forests, is personalisable and allows a clear insight into the decision-making process. A well-structured rule set is created and every rule of the decision-making process can be observed by the user (physician). Furthermore, the user has an impact on the creation of the final rule set and the algorithm allows the comparison of different diseases as well as regional differences in the same disease. The algorithm is applicable to various decision problems. In this paper we will evaluate it on diagnosing neurological diseases and therefore refer to the algorithm as PECLIDES Neuro.

摘要

阿尔茨海默病和帕金森病等神经退行性疾病影响着全球数百万人。事实证明,早期诊断能大大增加减缓疾病进展的几率。正确的诊断通常依赖于对大量患者数据的分析,因此非常适合机器学习算法的支持,这些算法能够从过去的诊断中学习,并清晰地洞察患者症状与数据之间的复杂相互作用。不幸的是,许多当代机器学习技术未能揭示它们得出结论的具体方式,而这一特性在提供诊断时被视为至关重要。在此,我们介绍我们的个性化临床决策支持系统(PECLIDES),这是一种为解决诊断检测中的这一特定缺陷而制定的算法流程。PECLIDES能清晰地洞察导致诊断的决策过程,使其成为一个灰盒模型。我们的算法丰富了马谢伊赫和格拉斯在数据整合、个性化医疗、可用性、可视化和交互性方面的基础工作。我们的决策支持系统是转化医学的一种操作。它基于随机森林,具有个性化特点,并能清晰地洞察决策过程。创建了一个结构良好的规则集,决策过程的每一条规则都能被用户(医生)观察到。此外,用户对最终规则集的创建有影响,并且该算法允许对不同疾病以及同一疾病的区域差异进行比较。该算法适用于各种决策问题。在本文中,我们将对其在诊断神经疾病方面进行评估,因此将该算法称为PECLIDES Neuro。

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