Development and validation of a prognostic prediction model for lumbar-disc herniation based on machine learning and fusion of clinical text data and radiomic features.

IF 2.6 3区 医学 Q2 CLINICAL NEUROLOGY
Zhipeng Wang, Hongwei Zhang, Yuanzhen Li, Xiaogang Zhang, Jianjun Liu, Zhen Ren, Daping Qin, Xiyun Zhao
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引用次数: 0

Abstract

Objective: Based on preoperative clinical text data and lumbar magnetic resonance imaging (MRI), we applied machine learning (ML) algorithms to construct a model that would predict early recurrence in lumbar-disc herniation (LDH) patients who underwent percutaneous endoscopic lumbar discectomy (PELD). We then explored the clinical performance of this prognostic prediction model via multimodal-data fusion.

Methods: Clinical text data and radiological images of LDH patients who underwent PELD at the Intervertebral Disc Center of the Affiliated Hospital of Gansu University of Traditional Chinese Medicine (AHGUTCM; Lanzhou, China) were retrospectively collected. Two radiologists with clinical-image reading experience independently outlined regions of interest (ROI) on the MRI images and extracted radiomic features using 3D Slicer software. We then randomly separated the samples into a training set and a test set at a 7:3 ratio, used eight ML algorithms to construct predictive radiomic-feature models, evaluated model performance by the area under the curve (AUC), and selected the optimal model for screening radiomic features and calculating radiomic scores (Rad-scores). Finally, after using logistic regression to construct a nomogram for predicting the early-recurrence rate, we evaluated the nomogram's clinical applicability using a clinical-decision curve.

Results: We initially extracted 851 radiomic features. After constructing our models, we determined based on AUC values that the optimal ML algorithm was least absolute shrinkage and selection operator (LASSO) regression, which had an AUC of 0.76 and an accuracy rate of 91%. After screening features using the LASSO model, we predicted Rad-score for each sample of recurrent LDH using nine radiomic features. Next, we fused three of these clinical features -age, diabetes, and heavy manual labor-to construct a nomogram with an AUC of 0.86 (95% confidence interval [CI], 0.79-0.94). Analysis of the clinical-decision and impact curves showed that the prognostic prediction model with multimodal-data fusion had good clinical validity and applicability.

Conclusion: We developed and analyzed a prognostic prediction model for LDH with multimodal-data fusion. Our model demonstrated good performance in predicting early postoperative recurrence in LDH patients; therefore, it has good prospects for clinical application and can provide clinicians with objective, accurate information to help them decide on presurgical treatment plans. However, external-validation studies are still needed to further validate the model's comprehensive performance and improve its generalization and extrapolation.

基于机器学习和临床文本数据和放射学特征融合的腰椎间盘突出症预后预测模型的开发和验证。
目的:基于术前临床文本数据和腰椎磁共振成像(MRI),我们应用机器学习(ML)算法构建一个预测经皮内镜下腰椎间盘切除术(PELD)腰椎间盘突出症(LDH)患者早期复发的模型。然后,我们通过多模态数据融合探讨了该预后预测模型的临床表现。方法:在甘肃中医药大学附属医院椎间盘中心(AHGUTCM;兰州,中国)回顾性收集。两位具有临床图像阅读经验的放射科医生独立勾勒出MRI图像上的感兴趣区域(ROI),并使用3D切片器软件提取放射学特征。然后,我们将样本按7:3的比例随机分为训练集和测试集,使用8种ML算法构建预测放射组学特征模型,通过曲线下面积(AUC)评估模型的性能,并选择最优模型筛选放射组学特征并计算放射组学分数(Rad-scores)。最后,在使用逻辑回归构建预测早期复发率的nomogram之后,我们使用临床决策曲线来评估nomogram的临床适用性。结果:初步提取了851个放射学特征。在构建模型后,我们根据AUC值确定了最优的ML算法是最小绝对收缩和选择算子(LASSO)回归,其AUC为0.76,准确率为91%。在使用LASSO模型筛选特征后,我们使用9个放射学特征预测每个复发LDH样本的rad评分。接下来,我们融合了这三个临床特征——年龄、糖尿病和繁重的体力劳动——构建了AUC为0.86的nomogram(95%可信区间[CI], 0.79-0.94)。临床决策曲线和影响曲线分析表明,多模态数据融合的预后预测模型具有良好的临床有效性和适用性。结论:我们建立并分析了LDH的多模态数据融合预后预测模型。我们的模型在预测LDH患者术后早期复发方面表现良好;因此具有良好的临床应用前景,可以为临床医生提供客观、准确的信息,帮助他们决定手术前的治疗方案。但是,还需要外部验证研究来进一步验证模型的综合性能,提高模型的泛化和外推性。
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来源期刊
European Spine Journal
European Spine Journal 医学-临床神经学
CiteScore
4.80
自引率
10.70%
发文量
373
审稿时长
2-4 weeks
期刊介绍: "European Spine Journal" is a publication founded in response to the increasing trend toward specialization in spinal surgery and spinal pathology in general. The Journal is devoted to all spine related disciplines, including functional and surgical anatomy of the spine, biomechanics and pathophysiology, diagnostic procedures, and neurology, surgery and outcomes. The aim of "European Spine Journal" is to support the further development of highly innovative spine treatments including but not restricted to surgery and to provide an integrated and balanced view of diagnostic, research and treatment procedures as well as outcomes that will enhance effective collaboration among specialists worldwide. The “European Spine Journal” also participates in education by means of videos, interactive meetings and the endorsement of educative efforts. Official publication of EUROSPINE, The Spine Society of Europe
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