Multimodal Deep Learning-based Radiomics Approach for Predicting Surgical Outcomes in Patients with Cervical Ossification of the Posterior Longitudinal Ligament.

IF 2.6 2区 医学 Q2 CLINICAL NEUROLOGY Spine Pub Date : 2024-11-15 Epub Date: 2024-07-08 DOI:10.1097/BRS.0000000000005088
Satoshi Maki, Takeo Furuya, Keiichi Katsumi, Hideaki Nakajima, Kazuya Honjoh, Shuji Watanabe, Takashi Kaito, Shota Takenaka, Yuya Kanie, Motoki Iwasaki, Masayuki Furuya, Gen Inoue, Masayuki Miyagi, Shinsuke Ikeda, Shiro Imagama, Hiroaki Nakashima, Sadayuki Ito, Hiroshi Takahashi, Yoshiharu Kawaguchi, Hayato Futakawa, Kazuma Murata, Toshitaka Yoshii, Takashi Hirai, Masao Koda, Seiji Ohtori, Masashi Yamazaki
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Abstract

Study design: A retrospective analysis.

Objective: This research sought to develop a predictive model for surgical outcomes in patients with cervical ossification of the posterior longitudinal ligament (OPLL) using deep learning and machine learning (ML) techniques.

Summary of background data: Determining surgical outcomes assists surgeons in communicating prognosis to patients and setting their expectations. Deep learning and ML are computational models that identify patterns from large data sets and make predictions.

Methods: Of the 482 patients, 288 patients were included in the analysis. A minimal clinically important difference (MCID) was defined as gain in Japanese Orthopaedic Association (JOA) score of 2.5 points or more. The predictive model for MCID achievement at 1 year postsurgery was constructed using patient background, clinical symptoms, and preoperative imaging features (x-ray, CT, MRI) analyzed through LightGBM and deep learning with RadImagenet.

Results: The median preoperative JOA score was 11.0 (IQR: 9.0-12.0), which significantly improved to 14.0 (IQR: 12.0-15.0) at 1 year after surgery ( P < 0.001, Wilcoxon signed-rank test). The average improvement rate of the JOA score was 44.7%, and 60.1% of patients achieved the MCID. Our model exhibited an area under the receiver operating characteristic curve of 0.81 and the accuracy of 71.9% in predicting MCID at 1 year. Preoperative JOA score and certain preoperative imaging features were identified as the most significant factors in the predictive models.

Conclusion: A predictive ML and deep learning model for surgical outcomes in OPLL patients is feasible, suggesting promising applications in spinal surgery.

Level of evidence: 4.

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基于多模态深度学习的放射组学方法用于预测颈椎后纵韧带骨化患者的手术疗效
研究设计回顾性分析:本研究试图利用深度学习和机器学习(ML)技术,为颈椎后纵韧带骨化症(OPLL)患者的手术预后建立一个预测模型:确定手术预后有助于外科医生与患者沟通预后并确定他们的期望值。深度学习和机器学习是一种计算模型,可从大型数据集中识别模式并进行预测:在 482 名患者中,288 名患者被纳入分析。最小临床意义差异(MCID)定义为日本骨科协会(JOA)评分增加 2.5 分或更多。术后 1 年达到 MCID 的预测模型是通过 LightGBM 和 RadImagenet 深度学习分析患者背景、临床症状和术前成像特征(X 光、CT、MRI)构建的:术前JOA评分的中位数为11.0(IQR:9.0-12.0),术后1年时显著提高至14.0(IQR:12.0-15.0)(P<0.001,Wilcoxon符号秩检验)。JOA评分的平均改善率为44.7%,60.1%的患者达到了MCID。我们的模型预测 1 年后 MCID 的接收者操作特征曲线下面积为 0.81,准确率为 71.9%。术前JOA评分和某些术前成像特征被确定为预测模型中最重要的因素:OPLL患者手术预后的预测性ML和深度学习模型是可行的,表明其在脊柱手术中的应用前景广阔:4.
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
Spine
Spine 医学-临床神经学
CiteScore
5.90
自引率
6.70%
发文量
361
审稿时长
6.0 months
期刊介绍: Lippincott Williams & Wilkins is a leading international publisher of professional health information for physicians, nurses, specialized clinicians and students. For a complete listing of titles currently published by Lippincott Williams & Wilkins and detailed information about print, online, and other offerings, please visit the LWW Online Store. Recognized internationally as the leading journal in its field, Spine is an international, peer-reviewed, bi-weekly periodical that considers for publication original articles in the field of Spine. It is the leading subspecialty journal for the treatment of spinal disorders. Only original papers are considered for publication with the understanding that they are contributed solely to Spine. The Journal does not publish articles reporting material that has been reported at length elsewhere.
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