医学
疾病
肿瘤科
预期寿命
内科学
放射治疗
转移
比例危险模型
阶段(地层学)
癌症
外科
重症监护医学
人口
环境卫生
古生物学
生物
作者
Yuting Pan,Yen-Po Lin,Hung‐Kuan Yen,Hung-Ho Yen,Chi-Ching Huang,Hsiang‐Chieh Hsieh,Stein J. Janssen,Ming‐Hsiao Hu,Wei‐Hsin Lin,Olivier Q. Groot
标识
DOI:10.1097/corr.0000000000003030
摘要
Bone metastasis in advanced cancer is challenging because of pain, functional issues, and reduced life expectancy. Treatment planning is complex, with consideration of factors such as location, symptoms, and prognosis. Prognostic models help guide treatment choices, with Skeletal Oncology Research Group machine-learning algorithms (SORG-MLAs) showing promise in predicting survival for initial spinal metastases and extremity metastases treated with surgery or radiotherapy. Improved therapies extend patient lifespans, increasing the risk of subsequent skeletal-related events (SREs). Patients experiencing subsequent SREs often suffer from disease progression, indicating a deteriorating condition. For these patients, a thorough evaluation, including accurate survival prediction, is essential to determine the most appropriate treatment and avoid aggressive surgical treatment for patients with a poor survival likelihood. Patients experiencing subsequent SREs often suffer from disease progression, indicating a deteriorating condition. However, some variables in the SORG prediction model, such as tumor histology, visceral metastasis, and previous systemic therapies, might remain consistent between initial and subsequent SREs. Given the prognostic difference between patients with and without a subsequent SRE, the efficacy of established prognostic models-originally designed for individuals with an initial SRE-in addressing a subsequent SRE remains uncertain. Therefore, it is crucial to verify the model's utility for subsequent SREs.
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