Development of a Multi-Institutional Prediction Model for Three-Year Survival Status in Patients with Uterine Leiomyosarcoma (AGOG11-022/QCGC1302 Study)

Author:

Tse Ka-YuORCID,Wong Richard Wing-Cheuk,Chao Angel,Ueng Shir-Hwa,Yang Lan-Yan,Cummings Margaret,Smith Deborah,Lai Chiung-Ru,Lau Hei-Yu,Yen Ming-Shyen,Cheung Annie Nga-Yin,Leung Charlotte Ka-Lun,Chan Kit-Sheung,Chan Alice Ngot-Htain,Li Wai-Hon,Choi Carmen Ka-Man,Pong Wai-Mei,Hui Hoi-Fong,Yuk Judy Ying-Wah,Yao Hung,Yuen Nancy Wah-Fun,Obermair AndreasORCID,Lai Chyong-Huey,Ip Philip Pun-ChingORCID,Ngan Hextan Yuen-Sheung

Abstract

Background: The existing staging systems of uterine leiomyosarcoma (uLMS) cannot classify the patients into four non-overlapping prognostic groups. This study aimed to develop a prediction model to predict the three-year survival status of uLMS. Methods: In total, 201 patients with uLMS who had been treated between June 1993 and January 2014, were analyzed. Potential prognostic indicators were identified by univariate models followed by multivariate analyses. Prediction models were constructed by binomial regression with 3-year survival status as a binary outcome, and the final model was validated by internal cross-validation. Results: Nine potential parameters, including age, log tumor diameter, log mitotic count, cervical involvement, parametrial involvement, lymph node metastasis, distant metastasis, tumor circumscription and lymphovascular space invasion were identified. 110 patients had complete data to build the prediction models. Age, log tumor diameter, log mitotic count, distant metastasis, and circumscription were significantly correlated with the 3-year survival status. The final model with the lowest Akaike’s Information Criterion (117.56) was chosen and the cross validation estimated prediction accuracy was 0.745. Conclusion: We developed a prediction model for uLMS based on five readily available clinicopathologic parameters. This might provide a personalized prediction of the 3-year survival status and guide the use of adjuvant therapy, a cancer surveillance program, and future studies.

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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