AN INTELLIGIBLE AI-DRIVEN DECISION SUPPORT SYSTEM FOR POSTSTROKE MOBILITY ASSESSMENT.

Jin Cheng Liaw, Dominik Raab, Malte Weber, Mario Siebler, Harald Hefter, Dörte Zietz, Marcus Jäger, Andrés Kecskeméthy, Francisco Geu Flores
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Abstract

Objective: Long-term mobility impairment is a sequel of stroke victims which requires intensive medical and physiotherapeutic care. Detailed assessment of therapeutic success is relevant to achieving efficacy, but requires expert knowledge, since mobility disorders are complex. Increasing shortage of qualified staff and larger numbers of patients are thus major problems in this field. To meet these challenges, we show that machine learning algorithms can reproduce expert mobility assessment from gait data with acceptable accuracy, supporting poststroke evaluation while giving intelligible feedback into how the assessments were generated.

Methods: A total of 100 hemiparetic stroke patients received clinical examinations followed by instrumented gait analysis and were assigned a Stroke Mobility Score by an interdisciplinary expert board. From each measured stride pair, 680 features were extracted. After removing non-discriminating features, two regression models were trained: a decision tree and a multilayer perceptron artificial neural network.

Results: The models yielded good to very good (Cohen) coefficients of determination. The interpretable decision-trees and the explanations obtained from the neural network unveiled key features supporting the mobility assessments.

Conclusion: The automated assessments agree well with those of the experts. Synergistic interactions between system, and experts via the computed key features may improve quality in diagnosis and objectify therapeutic targets.

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脑卒中后活动能力评估的可理解ai驱动决策支持系统。
目的:脑卒中患者的长期活动障碍需要加强医疗和理疗护理。治疗成功的详细评估与实现疗效有关,但需要专业知识,因为行动障碍是复杂的。因此,合格工作人员的日益短缺和病人数量的增加是这一领域的主要问题。为了应对这些挑战,我们展示了机器学习算法可以以可接受的精度从步态数据中再现专家的移动性评估,支持中风后评估,同时为评估的生成方式提供可理解的反馈。方法:共100例偏瘫性脑卒中患者接受临床检查,随后进行仪器步态分析,并由跨学科专家委员会分配脑卒中活动能力评分。从每个测量的步幅对中提取680个特征。在去除非判别特征后,训练了两个回归模型:决策树模型和多层感知器人工神经网络模型。结果:模型产生了良好到非常好的(Cohen)决定系数。可解释决策树和从神经网络获得的解释揭示了支持流动性评估的关键特征。结论:自动评估结果与专家评估结果吻合较好。通过计算的关键特征,系统和专家之间的协同作用可以提高诊断质量并使治疗目标客观化。
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