Ali AlRamini, Farahnaz Tafti, Mohammad Ali Takallou, Iraklis Ilias Pipinos, Sara A. Myers, Fadi Alsaleem
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After analyzing biomechanical data from 42 healthy controls and 65 patients with PAD before and after treatment and correlating it with other measures such as quality of life questionnaires, our findings reveal that ground reaction forces (GRF) features emerged as robust indicators of PAD severity. The GRF Propulsive Peak, in particular, demonstrated high accuracy (0.909) in quantifying PAD severity and is used to develop a straightforward metric for assessing PAD severity. This severity metric is used to gauge the outcome of a specific PAD treatment by comparing the severity before and after the treatment. Machine-learning models were then developed to predict such post-treatment outcomes effectively from the patient non-clinical data before treatment. This approach showed promise in predicting the effectiveness of a treatment for a patient with PAD before performing it, highlighting the potential of machine learning models in revolutionizing PAD treatment strategies. 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引用次数: 0
摘要
外周动脉疾病(PAD)严重影响生活质量,其严重程度各不相同,正确识别有助于选择适当的治疗方法,实现个性化治疗。然而,目前面临的挑战是没有一种公认的方法来量化 PAD 患者的严重程度。这就导致在决定给定的 PAD 患者的治疗方案时需要反复试验。本研究利用生物力学数据等非临床数据和先进的机器学习技术来检测 PAD 的严重程度并加强治疗选择,从而克服了这一难题。在对 42 名健康对照组和 65 名 PAD 患者治疗前后的生物力学数据进行分析,并将其与生活质量调查问卷等其他测量方法进行关联后,我们的研究结果表明,地面反作用力(GRF)特征是 PAD 严重程度的可靠指标。尤其是地面反作用力推进峰,在量化 PAD 严重程度方面表现出了很高的准确性(0.909),并被用于制定评估 PAD 严重程度的直接指标。通过比较治疗前后的严重程度,该严重程度指标可用于衡量特定 PAD 治疗的结果。然后开发了机器学习模型,以便从患者治疗前的非临床数据中有效预测治疗后的结果。这种方法显示了在对 PAD 患者进行治疗前预测治疗效果的前景,凸显了机器学习模型在革新 PAD 治疗策略方面的潜力。我们的研究结果为以数据为驱动、以患者为中心的PAD管理方法奠定了基础,优化了治疗策略,改善了患者的预后。
Toward Predicting Peripheral Artery Disease Treatment Outcomes Using Non-Clinical Data
Peripheral Artery Disease (PAD) significantly impairs quality of life and presents varying degrees of severity that correctly identifying would help choose the proper treatment approach and enable personalized treatment approaches. However, the challenge is that there is no single agreed-on measure to quantify the severity of a patient with PAD. This led to a trial-and-error approach to deciding the course of treatment for a given patient with PAD. This study uses non-clinical data, such as biomechanical data and advanced machine-learning techniques, to detect PAD severity levels and enhance treatment selection to overcome this challenge. After analyzing biomechanical data from 42 healthy controls and 65 patients with PAD before and after treatment and correlating it with other measures such as quality of life questionnaires, our findings reveal that ground reaction forces (GRF) features emerged as robust indicators of PAD severity. The GRF Propulsive Peak, in particular, demonstrated high accuracy (0.909) in quantifying PAD severity and is used to develop a straightforward metric for assessing PAD severity. This severity metric is used to gauge the outcome of a specific PAD treatment by comparing the severity before and after the treatment. Machine-learning models were then developed to predict such post-treatment outcomes effectively from the patient non-clinical data before treatment. This approach showed promise in predicting the effectiveness of a treatment for a patient with PAD before performing it, highlighting the potential of machine learning models in revolutionizing PAD treatment strategies. Our findings lay the groundwork for a more data-driven, patient-centric approach to PAD management, optimizing treatment strategies for better patient outcomes.