Low back pain (LBP) and sciatica may require surgical therapy when they are symptomatic of severe pain. However, there is no effective measures to evaluate the surgical outcomes in advance. This work combined elements of Eastern medicine and machine learning, and developed a preoperative assessment tool to predict the prognosis of lumbar spinal surgery in LBP and sciatica patients. Standard operative assessments, traditional Chinese medicine body constitution assessments, planned surgical approach, and vowel pronunciation recordings were collected and stored in different modalities. Our work provides insights into leveraging modality combinations, multimodals, and fusion strategies. The interpretability of models and correlations between modalities were also inspected. Based on the recruited 105 patients, we found that combining standard operative assessments, body constitution assessments, and planned surgical approach achieved the best performance in 0.81 accuracy. Our approach is effective and can be widely applied in general practice due to simplicity and effective.
翻译:低背部疼痛(LBP)和静脉瘤疗法在出现严重疼痛症状时可能需要外科治疗;然而,没有有效措施事先评价外科手术的结果;这项工作结合了东方医学和机器学习的内容,并开发了一种手术前评估工具,以预测液脊椎外科和静脉瘤病人的预测;标准操作评估、中国传统医学机构宪法评估、计划外科手术方法和元音记录以不同方式收集和储存。我们的工作为利用模式组合、多式联运和聚合战略提供了深刻的见解。模型的可解释性以及各种模式之间的关联也受到了检查。根据所聘用的105名病人,我们发现将标准操作评估、机构宪法评估和计划外科手术方法结合起来,以0.81的准确性实现了最佳表现。我们的方法是有效的,由于简单和有效,可以广泛用于一般做法。</s>