增强患者康复效果:神经和骨科疾病家庭出院的人工智能驱动预测建模。

IF 5.2 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Leonardo Buscarini, Paola Romano, Elena Sofia Cocco, Carlo Damiani, Sanaz Pournajaf, Marco Franceschini, Francesco Infarinato
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引用次数: 0

摘要

近年来,医学和计算机科学领域的融合在科学研究领域取得了显著的进展。这两个领域的进步使得大量数据得以生成,用于预测和识别有趣的集群和路径。机器学习(ML)模型在医疗领域的应用是探索最引人注目和最具挑战性的主题之一,它弥合了人工智能(AI)和医疗保健之间的差距。人工智能和医疗信息的结合为创造对医疗保健提供者和医生都有利的工具提供了可能性。这可以加强康复治疗和病人护理。在康复方面,这项工作提供了另一种视角:预测患者在完成康复方案后的出院情况。从电子病历中收集7282例住院患者的人口学和临床资料,每个病历分为神经内科患者(NP, N = 3222)和骨科患者(OP, N = 4060)。为了确定最合适的机器学习模型,进行了广泛的数据预处理阶段。这个过程涉及变量重新编码、缩放和评估不同的数据集平衡方法以优化模型性能。在对临床康复领域常用的算法进行了全面的回顾和比较之后,我们选择了随机过采样(ROS)技术与随机森林(RF)机器学习模型相结合。随后,使用网格搜索方法进行综合超参数调整阶段。基于对平衡训练集(不切实际的场景)进行的10倍交叉验证,优化模型在OP和NP方面的平均准确率分别达到98%和96%。当在不平衡数据集(现实世界条件)上进行测试时,RF模型保持了较强的泛化性能,OP的准确率达到90%,NP的准确率达到83%。这项工作指出了人工智能在医学上日益重要,尤其是在个性化康复领域。这些方法的使用可能预示着医疗保健的变革。机器学习的整合不仅提高了治疗的准确性,而且为以患者为中心的护理开辟了新的可能性,改善了接受康复治疗的个人的治疗结果和护理质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing patient rehabilitation outcomes: artificial intelligence-driven predictive modeling for home discharge in neurological and orthopedic conditions.

In recent years, the fusion of the medical and computer science domains has gained significant traction in the scientific research landscape. Progress in both fields has enabled the generation of a vast amount of data used for making predictions and identifying interesting clusters and pathways. The Machine Learning (ML) model's application in the medical domain is one of the most compelling and challenging topics to explore, bridging the gap between Artificial Intelligence (AI) and healthcare. The combination of AI and medical information offers the possibility to create tools that can benefit both healthcare providers and physicians. This enables the enhancement of rehabilitation therapy and patient care. In the rehabilitation context, this work provides an alternative perspective: prediction of patients' home discharge upon completing the rehabilitation protocol. Demographic and clinical data were collected on 7282 inpatients from electronic Medical Record, each record was categorized into Neurological Patients (NP, N = 3222) or Orthopedic Patients (OP, N = 4060). To identify the most suitable machine learning model, an extensive data preprocessing phase was conducted. This process involved variables recoding, scaling, and the evaluation of different dataset balancing methods to optimize model performance. Following a thorough review and comparison of algorithms commonly employed in the clinical-rehabilitative field, the Random Over Sampling (ROS) technique, in combination with the Random Forest (RF) machine learning model, was selected. Subsequently, a comprehensive hyperparameter tuning phase was performed using a grid search approach. The optimized model achieved an average accuracy of 98% for OP and 96% for NP, based on 10-fold cross-validation applied to the balanced training set (unrealistic scenario). When tested on the unbalanced dataset (real-world condition), the RF model maintained strong generalization performance, achieving 90% accuracy for OP and 83% for NP. This work points out the increasing importance of AI in medicine, especially in the realm of personalized rehabilitation. The use of such approaches could signify a transformative shift in healthcare. The integration of machine learning not only enhances the precision of treatment but also opens new possibilities for patient-centered care, improving outcomes and quality of care for individuals undergoing rehabilitation.

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来源期刊
Journal of NeuroEngineering and Rehabilitation
Journal of NeuroEngineering and Rehabilitation 工程技术-工程:生物医学
CiteScore
9.60
自引率
3.90%
发文量
122
审稿时长
24 months
期刊介绍: Journal of NeuroEngineering and Rehabilitation considers manuscripts on all aspects of research that result from cross-fertilization of the fields of neuroscience, biomedical engineering, and physical medicine & rehabilitation.
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