Department of Orthopaedic Surgery, Nagoya University Graduate School of Medicine, 65 Tsurumaicho, Showa Ward, Nagoya, Aichi, 466-8550, Japan.
Japanese Multicenter Research Organization for Ossification of the Spinal Ligament, Tokyo, Japan.
Eur Spine J. 2023 Nov;32(11):3797-3806. doi: 10.1007/s00586-023-07562-2. Epub 2023 Feb 6.
Postoperative complication prediction helps surgeons to inform and manage patient expectations. Deep learning, a model that finds patterns in large samples of data, outperform traditional statistical methods in making predictions. This study aimed to create a deep learning-based model (DLM) to predict postoperative complications in patients with cervical ossification of the posterior longitudinal ligament (OPLL).
This prospective multicenter study was conducted by the 28 institutions, and 478 patients were included in the analysis. Deep learning was used to create two predictive models of the overall postoperative complications and neurological complications, one of the major complications. These models were constructed by learning the patient's preoperative background, clinical symptoms, surgical procedures, and imaging findings. These logistic regression models were also created, and these accuracies were compared with those of the DLM.
Overall complications were observed in 127 cases (26.6%). The accuracy of the DLM was 74.6 ± 3.7% for predicting the overall occurrence of complications, which was comparable to that of the logistic regression (74.1%). Neurological complications were observed in 48 cases (10.0%), and the accuracy of the DLM was 91.7 ± 3.5%, which was higher than that of the logistic regression (90.1%).
A new algorithm using deep learning was able to predict complications after cervical OPLL surgery. This model was well calibrated, with prediction accuracy comparable to that of regression models. The accuracy remained high even for predicting only neurological complications, for which the case number is limited compared to conventional statistical methods.
术后并发症预测有助于外科医生告知并管理患者的预期。深度学习是一种在大量数据样本中寻找模式的模型,在预测方面优于传统的统计方法。本研究旨在创建一种基于深度学习的模型(DLM),以预测颈椎后纵韧带骨化(OPLL)患者的术后并发症。
这是一项由 28 家机构进行的前瞻性多中心研究,共纳入 478 例患者进行分析。深度学习用于创建总体术后并发症和神经并发症(主要并发症之一)的两种预测模型。这些模型通过学习患者的术前背景、临床症状、手术过程和影像学表现来构建。还创建了这些逻辑回归模型,并比较了这些模型与 DLM 的准确性。
共有 127 例(26.6%)发生总体并发症。DLM 预测总体并发症发生的准确率为 74.6±3.7%,与逻辑回归相当(74.1%)。发生神经并发症 48 例(10.0%),DLM 的准确率为 91.7±3.5%,高于逻辑回归(90.1%)。
一种使用深度学习的新算法能够预测颈椎 OPLL 手术后的并发症。该模型具有良好的校准能力,预测准确性与回归模型相当。即使仅预测神经并发症,其准确性也很高,与传统的统计方法相比,神经并发症的病例数量有限。