Shah Akash A, Schwab Joseph H
Department of Orthopaedic Surgery, David Geffen School of Medicine at UCLA, Los Angeles, CA 90095, USA.
Department of Orthopaedic Surgery, Cedars-Sinai Medical Center, Los Angeles, CA 90048, USA.
Diagnostics (Basel). 2024 May 5;14(9):962. doi: 10.3390/diagnostics14090962.
Spinal metastasis is exceedingly common in patients with cancer and its prevalence is expected to increase. Surgical management of symptomatic spinal metastasis is indicated for pain relief, preservation or restoration of neurologic function, and mechanical stability. The overall prognosis is a major driver of treatment decisions; however, clinicians' ability to accurately predict survival is limited. In this narrative review, we first discuss the NOMS decision framework used to guide decision making in the treatment of patients with spinal metastasis. Given that decision making hinges on prognosis, multiple scoring systems have been developed over the last three decades to predict survival in patients with spinal metastasis; these systems have largely been developed using expert opinions or regression modeling. Although these tools have provided significant advances in our ability to predict prognosis, their utility is limited by the relative lack of patient-specific survival probability. Machine learning models have been developed in recent years to close this gap. Employing a greater number of features compared to models developed with conventional statistics, machine learning algorithms have been reported to predict 30-day, 6-week, 90-day, and 1-year mortality in spinal metastatic disease with excellent discrimination. These models are well calibrated and have been externally validated with domestic and international independent cohorts. Despite hypothesized and realized limitations, the role of machine learning methodology in predicting outcomes in spinal metastatic disease is likely to grow.
脊柱转移在癌症患者中极为常见,且其患病率预计还会上升。有症状的脊柱转移的外科治疗旨在缓解疼痛、保留或恢复神经功能以及维持机械稳定性。总体预后是治疗决策的主要驱动因素;然而,临床医生准确预测生存期的能力有限。在这篇叙述性综述中,我们首先讨论用于指导脊柱转移患者治疗决策的NOMS决策框架。鉴于决策取决于预后,在过去三十年中已经开发了多种评分系统来预测脊柱转移患者的生存期;这些系统主要是基于专家意见或回归模型开发的。尽管这些工具在预测预后的能力方面取得了重大进展,但其效用因相对缺乏患者特异性生存概率而受到限制。近年来已经开发了机器学习模型来弥补这一差距。与使用传统统计方法开发的模型相比,机器学习算法使用了更多的特征,据报道能够出色地辨别脊柱转移性疾病患者的30天、6周、90天和1年死亡率。这些模型校准良好,并已在国内和国际独立队列中进行了外部验证。尽管存在假设的和已认识到的局限性,但机器学习方法在预测脊柱转移性疾病预后方面的作用可能会不断扩大。