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心理变量在预测脊髓损伤后康复结果中的作用:一项人工神经网络研究。

The Role of Psychological Variables in Predicting Rehabilitation Outcomes After Spinal Cord Injury: An Artificial Neural Networks Study.

作者信息

Mascanzoni Marta, Luciani Alessia, Tamburella Federica, Iosa Marco, Lena Emanuela, Di Fonzo Sergio, Pisani Valerio, Di Lucente Maria Carmela, Caretti Vincenzo, Sideli Lucia, Cuzzocrea Gaia, Scivoletto Giorgio

机构信息

Spinal Center and Spinal Rehabilitation Laboratory, IRCCS Fondazione Santa Lucia, 00179 Rome, Italy.

Department of Human Sciences, LUMSA University of Rome, 00193 Rome, Italy.

出版信息

J Clin Med. 2024 Nov 25;13(23):7114. doi: 10.3390/jcm13237114.

Abstract

: Accurate prediction of neurorehabilitation outcomes following Spinal Cord Injury (SCI) is crucial for optimizing healthcare resource allocation and improving rehabilitation strategies. Artificial Neural Networks (ANNs) may identify complex prognostic factors in patients with SCI. However, the influence of psychological variables on rehabilitation outcomes remains underexplored despite their potential impact on recovery success. A cohort of 303 patients with SCI was analyzed with an ANN model that employed 17 input variables, structured into two hidden layers and a single output node. Clinical and psychological data were integrated to predict functional outcomes, which were measured by the Spinal Cord Independence Measure (SCIM) at discharge. Paired Wilcoxon tests were used to evaluate pre-post differences and linear regression was used to assess correlations, with Pearson's coefficient and the Root Mean Square Error calculated. : Significant improvements in SCIM scores were observed (21.8 ± 15.8 at admission vs. 57.4 ± 22.5 at discharge, < 0.001). The model assigned the highest predictive weight to SCIM at admission (10.3%), while psychological factors accounted for 36.3%, increasing to 40.9% in traumatic SCI cases. Anxiety and depression were the most influential psychological predictors. The correlation between the predicted and actual SCIM scores was R = 0.794 for the entire sample and R = 0.940 for traumatic cases. : The ANN model demonstrated the strong impact, especially for traumatic SCI, of psychological factors on functional outcomes. Anxiety and depression emerged as dominant negative predictors. Conversely, self-esteem and emotional regulation functioned as protective factors increasing functional outcomes. These findings support the integration of psychological assessments into predictive models to enhance accuracy in SCI rehabilitation outcomes.

摘要

准确预测脊髓损伤(SCI)后的神经康复结果对于优化医疗资源分配和改进康复策略至关重要。人工神经网络(ANN)可以识别SCI患者的复杂预后因素。然而,尽管心理变量对康复成功可能有潜在影响,但对康复结果的影响仍未得到充分探索。对303例SCI患者进行了分析,使用了一个具有17个输入变量的ANN模型,该模型由两个隐藏层和一个输出节点组成。整合临床和心理数据以预测功能结果,出院时通过脊髓独立测量(SCIM)进行测量。使用配对Wilcoxon检验评估前后差异,使用线性回归评估相关性,并计算Pearson系数和均方根误差。观察到SCIM评分有显著改善(入院时为21.8±15.8,出院时为57.4±22.5,<0.001)。该模型对入院时的SCIM赋予最高预测权重(10.3%),而心理因素占36.3%,在创伤性SCI病例中增至40.9%。焦虑和抑郁是最有影响力的心理预测因素。整个样本的预测SCIM评分与实际SCIM评分之间的相关性为R = 0.794,创伤性病例为R = 0.940。ANN模型证明了心理因素对功能结果有很强的影响,尤其是对创伤性SCI。焦虑和抑郁成为主要的负面预测因素。相反,自尊和情绪调节起到了保护因素的作用,增加了功能结果。这些发现支持将心理评估纳入预测模型,以提高SCI康复结果的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/457f/11642174/a8135a925f5b/jcm-13-07114-g001.jpg

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