Use of Artificial Intelligence for the Development of Predictive Model to Help in Decision-Making for Patients with Degenerative Lumbar Spine Disease.

Asian Journal of Neurosurgery Pub Date : 2022-08-25 eCollection Date: 2022-06-01 DOI:10.1055/s-0042-1750785
Gaurav Purohit, Madhur Choudhary, V D Sinha
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Abstract

Context  The aim of the study was to develop a prognostic model using artificial intelligence for patients undergoing lumbar spine surgery for degenerative spine disease for change in pain, functional status, and patient satisfaction based on preoperative variables included in following categories-sociodemographic, clinical, and radiological. Methods and Materials  A prospective cohort of 180 patients with lumbar degenerative spine disease was included and divided into three classes of management-conservative, decompressive surgery, and decompression with fixation. Preoperative variables, change in outcome measures (visual analog scale-VAS, Modified Oswestry Disability Index-MODI, and Neurogenic Claudication Outcome Score-NCOS), and type of management were assessed using Machine Learning models. These were used for creating a predictive tool for deciding the type of management that a patient should undergo to achieve the best results. Multivariate logistic regression was also used to identify prognostic factors of significance. Results  The area under the curve (AUC) was calculated from the receiver-operating characteristic (ROC) analysis to evaluate the discrimination capability of various machine learning models. Random Forest Classifier gave the best ROC-AUC score in all three classes (0.863 for VAS, 0.831 for MODI, and 0.869 for NCOS), and the macroaverage AUC score was found to be 0.842 suggesting moderate discriminatory power. A graphical user interface (GUI) tool was built using the machine learning algorithm thus defined to take input details of patients and predict change in outcome measures. Conclusion  This study demonstrates that machine learning can be used as a tool to help tailor the decision-making process for a patient to achieve the best outcome. The GUI tool helps to incorporate the study results into active decision-making.

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利用人工智能开发预测模型以帮助退行性腰椎疾病患者决策。
本研究的目的是利用人工智能为腰椎退行性脊柱疾病手术患者的疼痛、功能状态和患者满意度的变化建立一个预后模型,该模型基于以下类别的术前变量:社会人口学、临床和放射学。方法和材料对180例腰椎退行性脊柱疾病患者进行前瞻性队列研究,并将其分为保守治疗、减压手术和减压固定治疗三类。使用机器学习模型评估术前变量、结果测量的变化(视觉模拟量表- vas、改良Oswestry残疾指数- modi和神经源性跛行结局评分- ncos)和管理类型。这些被用来创建一个预测工具,用于决定患者应该接受的管理类型,以达到最佳效果。多因素逻辑回归也被用来确定预后的显著性因素。结果通过接受者-工作特征(ROC)分析计算曲线下面积(AUC),评价各种机器学习模型的识别能力。随机森林分类器在三个类别中给出了最好的ROC-AUC评分(VAS为0.863,MODI为0.831,NCOS为0.869),宏观平均AUC评分为0.842,表明歧视能力中等。使用机器学习算法构建图形用户界面(GUI)工具,从而定义输入患者的详细信息并预测结果测量的变化。本研究表明,机器学习可以作为一种工具,帮助患者量身定制决策过程,以达到最佳效果。GUI工具有助于将研究结果纳入主动决策。
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