Clinical prediction for surgical versus nonsurgical interventions in patients with vertebral osteomyelitis and discitis.

Q1 Medicine Journal of spine surgery Pub Date : 2024-06-21 Epub Date: 2024-05-17 DOI:10.21037/jss-23-111
Jennifer Lee, Miguel A Ruiz-Cardozo, Rujvee P Patel, Saad Javeed, Raj Swaroop Lavadi, Catherine Newsom-Stewart, Anton Alyakin, Camilo A Molina, Nitin Agarwal, Wilson Z Ray, Michele Santacatterina, Brenton H Pennicooke
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Abstract

Background: Vertebral osteomyelitis and discitis (VOD), an infection of intervertebral discs, often requires spine surgical intervention and timely management to prevent adverse outcomes. Our study aims to develop a machine learning (ML) model to predict the indication for surgical intervention (during the same hospital stay) versus nonsurgical management in patients with VOD.

Methods: This retrospective study included adult patients (≥18 years) with VOD (ICD-10 diagnosis codes M46.2,3,4,5) treated at a single institution between 01/01/2015 and 12/31/2019. The primary outcome studied was surgery. Candidate predictors were age, sex, race, Elixhauser comorbidity index, first-recorded lab values, first-recorded vital signs, and admit diagnosis. After splitting the dataset, XGBoost, logistic regression, and K-neighbor classifier algorithms were trained and tested for model development.

Results: A total of 1,111 patients were included in this study, among which 30% (n=339) of patients underwent surgical intervention. Age and sex did not significantly differ between the two groups; however, race did significantly differ (P<0.0001), with the surgical group having a higher percentage of white patients. The top ten model features for the best-performing model (XGBoost) were as follows (in descending order of importance): admit diagnosis of fever, negative culture, Staphylococcus aureus culture, partial pressure of arterial oxygen to fractional inspired oxygen ratio (PaO2:FiO2), admit diagnosis of intraspinal abscess and granuloma, admit diagnosis of sepsis, race, troponin I, acid-fast bacillus culture, and alveolar-arterial gradient (A-a gradient). XGBoost model metrics were as follows: accuracy =0.7534, sensitivity =0.7436, specificity =0.7586, and area under the curve (AUC) =0.8210.

Conclusions: The XGBoost model reliably predicts the indication for surgical intervention based on several readily available patient demographic information and clinical features. The interpretability of a supervised ML model provides robust insight into patient outcomes. Furthermore, it paves the way for the development of an efficient hospital resource allocation instrument, designed to guide clinical suggestions.

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对脊椎骨髓炎和椎间盘炎患者进行手术与非手术干预的临床预测。
背景:椎间盘骨髓炎和椎间盘炎(VOD)是一种椎间盘感染,通常需要脊柱手术干预和及时处理,以防止不良后果的发生。我们的研究旨在开发一种机器学习(ML)模型,用于预测 VOD 患者手术干预(在同一住院期间)与非手术治疗的适应症:这项回顾性研究纳入了 2015 年 1 月 1 日至 2019 年 12 月 31 日期间在一家机构接受治疗的 VOD(ICD-10 诊断代码 M46.2,3,4,5)成人患者(≥18 岁)。研究的主要结果是手术。候选预测因子包括年龄、性别、种族、Elixhauser 合并症指数、首次记录的实验室值、首次记录的生命体征和入院诊断。拆分数据集后,对 XGBoost、逻辑回归和 K-邻接分类器算法进行了训练和测试,以开发模型:本研究共纳入 1,111 名患者,其中 30% 的患者(n=339)接受了手术治疗。两组患者的年龄和性别无明显差异,但种族却存在明显差异(金黄色葡萄球菌培养、动脉氧分压与分量吸入氧比值(PaO2:FiO2)、椎管内脓肿和肉芽肿诊断、败血症诊断、种族、肌钙蛋白 I、耐酸杆菌培养和肺泡-动脉梯度(A-a 梯度))。XGBoost 模型的指标如下:准确性 =0.7534,灵敏度 =0.7436,特异性 =0.7586,曲线下面积(AUC) =0.8210:XGBoost 模型能根据一些现成的患者人口统计学信息和临床特征可靠地预测手术干预的适应症。有监督的 ML 模型的可解释性为患者的预后提供了可靠的洞察力。此外,它还为开发高效的医院资源分配工具铺平了道路,该工具旨在指导临床建议。
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来源期刊
Journal of spine surgery
Journal of spine surgery Medicine-Surgery
CiteScore
5.60
自引率
0.00%
发文量
24
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