Predicting mechanical complications in adult spinal deformity patients with postoperative proportioned and moderately disproportioned alignment.

IF 1
Baris Balaban, Nuri Demirci, Caglar Yilgor, Altug Yucekul, Tais Zulemyan, Sleiman Haddad, Shahnawaz Haleem, Feyzi Kilic, Ibrahim Obeid, Javier Pizones, Frank Kleinstueck, Francisco Javier Sanchez Perez, Ferran Pellise, Ahmet Alanay, Cetin Bagci, Osman Ugur Sezerman
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Abstract

Objective: Mechanical complications are common after adult spinal deformity (ASD) surgery and can significantly impair outcomes. This study aimed to predict such complications in proportioned and moderately disproportioned patients using a machine learning approach, to inform preoperative planning and enable early preventive care. Methods: Prospectively collected clinical data, including preoperative, intraoperative, and postoperative variables, radiographic param- eters, technical details, and patient-reported outcomes, were obtained from a multi-center ASD surgery database. Parameter tuning of a random forest (RF) classifier was performed using 9-times 3-fold cross-validation over 3 rounds of grid search, with the F-score used as the primary optimization metric. The final RF model was used to derive a clinically interpretable rule set using the inTrees framework. Permutation-based feature importance was assessed for F-score, accuracy, and sensitivity. Results: The model was trained on 295 patients (237 female, 58 male; mean age, 50 ± 19 years) with a minimum 2-year follow-up (mean 53 months, range 24-101). Mechanical complications were observed in 100 patients (34%). A test cohort of 98 patients (33% complication rate) was used for external validation. The RF model achieved 72% accuracy, 91% sensitivity, 64% specificity, and 93% negative predictive value. The derived rule set, comprising 8 rules using 1 to 3 features each, yielded 74% accuracy, 81% sensitivity, 71% specificity, and 83% negative predictive value. The location of the lower instrumented vertebra (LIV) was the most influential predictor. Conclusion: By excluding patients with severe deformities, as defined by the GAP score, this study focused on the more clinically ambiguous group of proportioned and moderately disproportioned patients. To the authors' knowledge, this is the first study to develop predictive tools specifically for this subgroup to assess the risk of mechanical complications following ASD surgery. These tools may assist in early risk stratification and guide preoperative decision-making to reduce postoperative complications and improve patient outcomes. Level of Evidence: Level III, Prognostic Study.

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Abstract Image

Abstract Image

预测成人脊柱畸形患者术后比例对齐和中度不比例对齐的机械并发症。
目的:机械并发症是成人脊柱畸形(ASD)手术后常见的并发症,并可显著影响预后。本研究旨在使用机器学习方法预测比例和中度比例患者的此类并发症,为术前计划提供信息并实现早期预防保健。方法:前瞻性收集临床数据,包括术前、术中和术后变量、影像学参数、技术细节和患者报告的结果,从多中心ASD手术数据库中获得。随机森林(RF)分类器的参数调优在3轮网格搜索中使用9次3倍交叉验证进行,f分数用作主要优化指标。最后的RF模型使用inTrees框架导出临床可解释的规则集。对基于排列的特征重要性进行f评分、准确性和敏感性评估。结果:该模型对295例患者进行了训练,其中女性237例,男性58例;平均年龄(50±19岁),至少2年随访(平均53个月,范围24-101)。机械性并发症100例(34%)。98例患者(33%的并发症发生率)的试验队列用于外部验证。RF模型准确率为72%,灵敏度为91%,特异性为64%,阴性预测值为93%。衍生的规则集由8个规则组成,每个规则使用1到3个特征,准确度为74%,灵敏度为81%,特异性为71%,阴性预测值为83%。下固定椎体(LIV)的位置是最具影响的预测因子。结论:通过排除由GAP评分定义的严重畸形患者,本研究将重点放在临床更模糊的比例和中度不成比例患者组。据作者所知,这是第一个专门为这一亚组开发预测工具来评估ASD手术后机械并发症风险的研究。这些工具可能有助于早期风险分层和指导术前决策,以减少术后并发症和改善患者预后。证据等级:III级,预后研究。
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