P-037使用人工智能预测椎体成形术的结果

N. Carter, H. Asadi, H. Kok, J. Maingard, G. Anselmetti, R. Chandra, J. Hirsch
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All available demographic and procedural factors were integrated into ML models as predictors, including demographic data, VCF etiology, number and location, procedural details and visual analogue scale (VAS) scores pre- and post-procedure. Successful clinical outcome was defined as a reduction by at least 67% (two-thirds) in VAS pain scores. ML algorithms were trained on these data to develop a model capable of categorizing predictors into good and poor outcomes. Results We analyzed 5785 patients with 20,463 VCFs treated by vertebroplasty. The majority (75%, n=4,312) were female with a median age of 73.5 (range 19–100) years. The most common VCF etiology was primary osteoporosis (55.2%), followed by secondary osteoporosis (14.7%), metastatic disease (13.2%), primary malignancy (5.5%), trauma (6.4%) and other (5.2%). Most patients had two levels treated (23.9%) followed by one (19.2%) and three levels (17.5%). The majority also had pre-procedure MRI (89.4%). Vertebroplasty was highly effective in pain relief with 97.9% (n=5,662) reporting clinically significant reduction in VAS. ML analysis based on a naive Bayes model (figure 1) demonstrated that the number of treated levels, primary malignancy as etiology, pre-procedure brace use, thoracolumbar, cervical levels and metastatic disease predicted a good clinical outcome in decreasing order of confidence. Overall, the ML model was approximately 90% accurate in predicting the outcome for individual patients after VCF. Conclusion Supervised ML algorithms have promising potential to predict the outcome following vertebroplasty. Our results suggest that a robust computation model could optimize the decision-making process for VCF management. Incorporating additional data from larger multicenter databases could further improve the accuracy of outcome prediction through iterative learning and refinement of the ML model. Disclosures N. Carter: None. H. Asadi: None. H. Kok: None. J. Maingard: None. 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引用次数: 0

摘要

椎体压缩性骨折(vcf)是骨质疏松症和脊柱肿瘤的常见并发症。椎体成形术为引起疼痛和残疾的vcf提供了一种治疗选择。基于治疗前因素预测疼痛缓解的结果可以有效地识别可能从手术中受益的患者,并指导临床决策。机器学习(ML)提供了分析大量临床数据以制定准确结果预测的能力。目的本研究的目的是评估ML技术的可行性,以建立一个准确预测椎体成形术后疼痛缓解结果的模型。方法对前瞻性收集的多中心数据库进行回顾性研究。将所有可用的人口统计学和手术因素作为预测因素整合到ML模型中,包括人口统计学数据、VCF病因、数量和位置、手术细节和手术前后视觉模拟量表(VAS)评分。成功的临床结果定义为VAS疼痛评分降低至少67%(三分之二)。机器学习算法在这些数据上进行训练,以开发一个能够将预测因子分为好结果和差结果的模型。结果我们分析了5785例20463例椎体成形术治疗的vcf。大多数(75%,n=4,312)为女性,中位年龄为73.5岁(19-100岁)。最常见的VCF病因是原发性骨质疏松症(55.2%),其次是继发性骨质疏松症(14.7%)、转移性疾病(13.2%)、原发性恶性肿瘤(5.5%)、创伤(6.4%)和其他(5.2%)。大多数患者接受两个水平的治疗(23.9%),其次是一个水平(19.2%)和三个水平(17.5%)。大多数患者术前也进行了MRI检查(89.4%)。椎体成形术在缓解疼痛方面非常有效,97.9% (n=5,662)报告VAS临床显著降低。基于朴素贝叶斯模型的ML分析(图1)表明,治疗水平的数量、原发性恶性肿瘤作为病因、术前支架使用、胸腰椎、颈椎水平和转移性疾病,按照置信度递减的顺序预测了良好的临床结果。总体而言,ML模型预测VCF后个体患者预后的准确率约为90%。结论有监督的机器学习算法在预测椎体成形术后的预后方面有很大的潜力。研究结果表明,一个稳健的计算模型可以优化VCF管理的决策过程。通过迭代学习和ML模型的改进,从更大的多中心数据库中加入额外的数据可以进一步提高结果预测的准确性。卡特:没有。H. Asadi:没有。H. Kok:没有。J. Maingard:没有。G.安塞尔梅蒂:没有。钱德拉:没有。J.赫希:没有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
P-037 Using artificial intelligence to predict vertebroplasty outcome
Background Vertebral compression fractures (VCFs) are a common complication of osteoporosis and spinal neoplasms. Vertebroplasty presents a treatment option for VCFs that cause pain and disability. Predicting pain relief outcomes based on pre-treatment factors may robustly identify patients likely to benefit from the procedure, and guide clinical decision-making. Machine learning (ML) offers the ability to analyze large volumes of clinical data to formulate accurate outcome predictions. Purpose The aim of this study was to assess the feasibility of ML techniques to develop a model for accurate prediction of pain relief outcomes after vertebroplasty. Method This was a retrospective study of a prospectively collected multicenter database. All available demographic and procedural factors were integrated into ML models as predictors, including demographic data, VCF etiology, number and location, procedural details and visual analogue scale (VAS) scores pre- and post-procedure. Successful clinical outcome was defined as a reduction by at least 67% (two-thirds) in VAS pain scores. ML algorithms were trained on these data to develop a model capable of categorizing predictors into good and poor outcomes. Results We analyzed 5785 patients with 20,463 VCFs treated by vertebroplasty. The majority (75%, n=4,312) were female with a median age of 73.5 (range 19–100) years. The most common VCF etiology was primary osteoporosis (55.2%), followed by secondary osteoporosis (14.7%), metastatic disease (13.2%), primary malignancy (5.5%), trauma (6.4%) and other (5.2%). Most patients had two levels treated (23.9%) followed by one (19.2%) and three levels (17.5%). The majority also had pre-procedure MRI (89.4%). Vertebroplasty was highly effective in pain relief with 97.9% (n=5,662) reporting clinically significant reduction in VAS. ML analysis based on a naive Bayes model (figure 1) demonstrated that the number of treated levels, primary malignancy as etiology, pre-procedure brace use, thoracolumbar, cervical levels and metastatic disease predicted a good clinical outcome in decreasing order of confidence. Overall, the ML model was approximately 90% accurate in predicting the outcome for individual patients after VCF. Conclusion Supervised ML algorithms have promising potential to predict the outcome following vertebroplasty. Our results suggest that a robust computation model could optimize the decision-making process for VCF management. Incorporating additional data from larger multicenter databases could further improve the accuracy of outcome prediction through iterative learning and refinement of the ML model. Disclosures N. Carter: None. H. Asadi: None. H. Kok: None. J. Maingard: None. G. Anselmetti: None. R. Chandra: None. J. Hirsch: None.
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