Comparison of eight modern preoperative scoring systems for survival prediction in patients with extremity metastasis
Lee, Tse-Ying; Chen, Yu-An; Groot, Olivier Q; Yen, Hung-Kuan; Bindels, Bas J J; Pierik, Robert-Jan; Hsieh, Hsiang-Chieh; Karhade, Aditya V; Tseng, Ting-En; Lai, Yi-Hsiang; Yang, Jing-Jen; Lee, Chia-Che; Hu, Ming-Hsiao; Verlaan, Jorrit-Jan; Schwab, Joseph H; Yang, Rong-Sen; Lin, Wei-Hsin
(2023) Cancer Medicine, volume 12, issue 13, pp. 14264 - 14281
(Article)
Abstract
BACKGROUND: Survival is an important factor to consider when clinicians make treatment decisions for patients with skeletal metastasis. Several preoperative scoring systems (PSSs) have been developed to aid in survival prediction. Although we previously validated the Skeletal Oncology Research Group Machine-learning Algorithm (SORG-MLA) in Taiwanese patients of Han Chinese descent,
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the performance of other existing PSSs remains largely unknown outside their respective development cohorts. We aim to determine which PSS performs best in this unique population and provide a direct comparison between these models. METHODS: We retrospectively included 356 patients undergoing surgical treatment for extremity metastasis at a tertiary center in Taiwan to validate and compare eight PSSs. Discrimination (c-index), decision curve (DCA), calibration (ratio of observed:expected survivors), and overall performance (Brier score) analyses were conducted to evaluate these models' performance in our cohort. RESULTS: The discriminatory ability of all PSSs declined in our Taiwanese cohort compared with their Western validations. SORG-MLA is the only PSS that still demonstrated excellent discrimination (c-indexes>0.8) in our patients. SORG-MLA also brought the most net benefit across a wide range of risk probabilities on DCA with its 3-month and 12-month survival predictions. CONCLUSIONS: Clinicians should consider potential ethnogeographic variations of a PSS's performance when applying it onto their specific patient populations. Further international validation studies are needed to ensure that existing PSSs are generalizable and can be integrated into the shared treatment decision-making process. As cancer treatment keeps advancing, researchers developing a new prediction model or refining an existing one could potentially improve their algorithm's performance by using data gathered from more recent patients that are reflective of the current state of cancer care.
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Keywords: Asian cohort, external validation, extremity metastasis, survival prediction models, Oncology, Radiology Nuclear Medicine and imaging, Cancer Research, Journal Article
ISSN: 2045-7634
Publisher: John Wiley & Sons Inc.
Note: Funding Information: This study was funded by the institutional project of National Taiwan University Hospital (No. 111‐N0070). Funding Information: We thank all healthcare professionals from various departments in National Taiwan University Hospital for their contribution in providing multidisciplinary care for our patients. We are also grateful to the staff at the Department of Medical Research for gathering data from the institutional integrative medical database. We would like to express our gratitude toward Professor Wen-Chung Lee (Department of Public Health, National Taiwan University) for providing consultation on the statistical methods employed in this study. Publisher Copyright: © 2023 The Authors. Cancer Medicine published by John Wiley & Sons Ltd.
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