Andrea Baudo , Mattia Luca Piccinelli , Reha-Baris Incesu , Simone Morra , Lukas Scheipner , Francesco Barletta , Stefano Tappero , Cristina Cano Garcia , Anis Assad , Zhe Tian , Pietro Acquati , Ottavio de Cobelli , Nicola Longo , Alberto Briganti , Carlo Terrone , Felix K.H. Chun , Derya Tilki , Sascha Ahyai , Fred Saad , Shahrokh F. Shariat , Pierre I. Karakiewicz
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Kaplan-Meier plots, univariable and multivariable Cox-regression models and receiver operating characteristic-derived area under the curve (AUC) estimates were used.</p></div><div><h3>Results</h3><p>Overall, 672 (65 %) liposarcoma (median tumor size 11 cm, interquartile range [IQR] 7–16) and 367 (35 %) leiomyosarcoma (median tumor size 8 cm, IQR 5–12) patients were identified. The p-value derived ideal tumor size cut-off was 17.1 cm, in liposarcoma and 7.0 cm, in leiomyosarcoma. In liposarcoma, according to p-value derived cut-off, five-year CSS rates were 92 vs 83 % (≤17.1 vs > 17.1 cm). This cut-off represented an independent predictor of CSS and improved prognostic ability from 83.8 to 86.8 % (Δ = 3 %). Similarly, among previously established cut-offs (5 vs 10 vs 15 cm), also 15 cm represented an independent predictor of CSS and improved prognostic ability from 83.8 to 87.0 % (Δ = 3.2 %). In leiomyosarcoma, according to p-value derived cut-off, five-year CSS rates were 86 vs 55 % (≤7.0 vs > 7.0 cm). This cut-off represented an independent predictor of CSS and improved prognostic ability from 68.6 to 76.5 % (Δ = 7.9 %).</p></div><div><h3>Conclusions</h3><p>In liposarcoma, the p-value derived tumor size cut-off was 17.1 cm vs 7.0 cm, in leiomyosarcoma. In both histologic subtypes, these cut-offs exhibited the optimal statistical characteristics (univariable, multivariable and AUC analyses). 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引用次数: 0
摘要
导言:在盆腔软组织脂肪肉瘤和亮肌肉瘤中,尚不清楚特定的肿瘤大小临界值是否有助于更好地预测预后,即癌症特异性生存(CSS)。我们测试了不同的肿瘤大小临界值是否能改善 CSS 预测。材料与方法确定了接受手术治疗的非转移性盆腔软组织肉瘤患者(2004-2019 年监测、流行病学和最终结果)。采用卡普兰-梅耶图、单变量和多变量 Cox 回归模型以及接收者操作特征曲线下面积 (AUC) 估计值。结果共发现 672 例(65%)脂肪肉瘤(中位肿瘤大小为 11 厘米,四分位距 [IQR] 为 7-16)和 367 例(35%)亮肌肉瘤(中位肿瘤大小为 8 厘米,四分位距 [IQR] 为 5-12)患者。脂肪肉瘤的理想肿瘤大小临界值为 17.1 厘米,而子宫肌瘤的理想肿瘤大小临界值为 7.0 厘米。在脂肪肉瘤中,根据p值得出的临界值,五年CSS率为92% vs 83%(≤17.1 vs > 17.1厘米)。这一临界值是CSS的独立预测指标,预后能力从83.8%提高到86.8%(Δ = 3%)。同样,在以前确定的临界值(5 vs 10 vs 15 厘米)中,15 厘米也能独立预测 CSS,并将预后能力从 83.8% 提高到 87.0%(Δ = 3.2%)。根据p值得出的临界值,白肌瘤的5年CSS率为86% vs 55%(≤7.0 vs > 7.0厘米)。结论在脂肪肉瘤中,根据p值得出的肿瘤大小临界值为17.1厘米,而在细肌瘤中为7.0厘米。在两种组织学亚型中,这些临界值都表现出最佳的统计特征(单变量、多变量和AUC分析)。在脂肪肉瘤中,15 厘米的临界值是一个有价值的选择。
Surgically treated pelvic liposarcoma and leiomyosarcoma: The effect of tumor size on cancer-specific survival
Introduction
In soft tissue pelvic liposarcoma and leiomyosarcoma, it is unknown whether a specific tumor size cut-off may help to better predict prognosis, defined as cancer-specific survival (CSS). We tested whether different tumor size cut-offs, could improve CSS prediction.
Materials and methods
Surgically treated non-metastatic soft tissue pelvic sarcoma patients were identified (Surveillance, Epidemiology, and End Results 2004–2019). Kaplan-Meier plots, univariable and multivariable Cox-regression models and receiver operating characteristic-derived area under the curve (AUC) estimates were used.
Results
Overall, 672 (65 %) liposarcoma (median tumor size 11 cm, interquartile range [IQR] 7–16) and 367 (35 %) leiomyosarcoma (median tumor size 8 cm, IQR 5–12) patients were identified. The p-value derived ideal tumor size cut-off was 17.1 cm, in liposarcoma and 7.0 cm, in leiomyosarcoma. In liposarcoma, according to p-value derived cut-off, five-year CSS rates were 92 vs 83 % (≤17.1 vs > 17.1 cm). This cut-off represented an independent predictor of CSS and improved prognostic ability from 83.8 to 86.8 % (Δ = 3 %). Similarly, among previously established cut-offs (5 vs 10 vs 15 cm), also 15 cm represented an independent predictor of CSS and improved prognostic ability from 83.8 to 87.0 % (Δ = 3.2 %). In leiomyosarcoma, according to p-value derived cut-off, five-year CSS rates were 86 vs 55 % (≤7.0 vs > 7.0 cm). This cut-off represented an independent predictor of CSS and improved prognostic ability from 68.6 to 76.5 % (Δ = 7.9 %).
Conclusions
In liposarcoma, the p-value derived tumor size cut-off was 17.1 cm vs 7.0 cm, in leiomyosarcoma. In both histologic subtypes, these cut-offs exhibited the optimal statistical characteristics (univariable, multivariable and AUC analyses). In liposarcoma, the 15 cm cut-off represented a valuable alternative.
期刊介绍:
Surgical Oncology is a peer reviewed journal publishing review articles that contribute to the advancement of knowledge in surgical oncology and related fields of interest. Articles represent a spectrum of current technology in oncology research as well as those concerning clinical trials, surgical technique, methods of investigation and patient evaluation. Surgical Oncology publishes comprehensive Reviews that examine individual topics in considerable detail, in addition to editorials and commentaries which focus on selected papers. The journal also publishes special issues which explore topics of interest to surgical oncologists in great detail - outlining recent advancements and providing readers with the most up to date information.