Risk factors for unplanned reoperation after corrective surgery for adult spinal deformity.

IF 4.7 2区 医学 Q2 CELL & TISSUE ENGINEERING
Seung-Jun Ryu, Jae-Young So, Yoon Ha, Sung-Uk Kuh, Dong-Kyu Chin, Keun-Su Kim, Yong-Eun Cho, Kyung-Hyun Kim
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Abstract

To determine the major risk factors for unplanned reoperations (UROs) following corrective surgery for adult spinal deformity (ASD) and their interactions, using machine learning-based prediction algorithms and game theory. Patients who underwent surgery for ASD, with a minimum of two-year follow-up, were retrospectively reviewed. In total, 210 patients were included and randomly allocated into training (70% of the sample size) and test (the remaining 30%) sets to develop the machine learning algorithm. Risk factors were included in the analysis, along with clinical characteristics and parameters acquired through diagnostic radiology. Overall, 152 patients without and 58 with a history of surgical revision following surgery for ASD were observed; the mean age was 68.9 years (SD 8.7) and 66.9 years (SD 6.6), respectively. On implementing a random forest model, the classification of URO events resulted in a balanced accuracy of 86.8%. Among machine learning-extracted risk factors, URO, proximal junction failure (PJF), and postoperative distance from the posterosuperior corner of C7 and the vertical axis from the centroid of C2 (SVA) were significant upon Kaplan-Meier survival analysis. The major risk factors for URO following surgery for ASD, i.e. postoperative SVA and PJF, and their interactions were identified using a machine learning algorithm and game theory. Clinical benefits will depend on patient risk profiles.

Abstract Image

Abstract Image

Abstract Image

成人脊柱畸形矫形术后意外再手术的危险因素。
利用基于机器学习的预测算法和博弈论,确定成人脊柱畸形(ASD)矫正手术后意外再手术(UROs)的主要危险因素及其相互作用。对接受ASD手术的患者进行回顾性研究,随访时间至少为两年。总共有210名患者被纳入并随机分配到训练集(占样本量的70%)和测试集(其余30%)中,以开发机器学习算法。分析包括危险因素,以及临床特征和通过诊断放射学获得的参数。总的来说,观察了152例无ASD手术翻修史和58例有ASD手术翻修史的患者;平均年龄分别为68.9岁(SD 8.7)和66.9岁(SD 6.6)。在实现随机森林模型时,URO事件分类的平衡准确率为86.8%。在机器学习提取的危险因素中,通过Kaplan-Meier生存分析,URO、近端连接失败(PJF)、术后与C7后上角的距离和与C2质心的垂直轴的距离(SVA)具有显著性。使用机器学习算法和博弈论确定ASD术后URO的主要危险因素,即术后SVA和PJF,以及它们之间的相互作用。临床效益将取决于患者的风险概况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Bone & Joint Research
Bone & Joint Research CELL & TISSUE ENGINEERING-ORTHOPEDICS
CiteScore
7.40
自引率
23.90%
发文量
156
审稿时长
12 weeks
期刊介绍: The gold open access journal for the musculoskeletal sciences. Included in PubMed and available in PubMed Central.
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