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MiROvaR 的验证,一种基于 microRNA 的早期复发预测因子,用于优化早期上皮性卵巢癌患者的预后评估的新策略。

Validation of MiROvaR, a microRNA-based predictor of early relapse in early stage epithelial ovarian cancer as a new strategy to optimise patients' prognostic assessment.

机构信息

Unit of Gynecologic Oncology, Fondazione IRCCS Istituto Nazionale Dei Tumori, Milan, Italy.

Department of Applied Research and Technology Development, Integrated Biology Platform, Fondazione IRCCS Istituto Nazionale Dei Tumori, Milan, Italy.

出版信息

Eur J Cancer. 2022 Jan;161:55-63. doi: 10.1016/j.ejca.2021.11.003. Epub 2021 Dec 15.

Abstract

AIM

Early-stage epithelial ovarian cancer (eEOC) patients have a generally favorable prognosis but unpredictable recurrence. Accurate prediction of risk of relapse is still a major concern, essentially to avoid overtreatment. Our robust tissue-based miRNA signature named MiROvaR, predicting early EOC recurrence in mostly advanced-stage EOC patients, is here challenged in an independent cohort to extend its classifying ability in the early-stage EOC setting.

METHODS

We retrospectively selected patients who underwent comprehensive surgical staging at our institution including stages from IA to IIB. miRNA expression profile was analysed in 89 cases and MiROvaR algorithm was applied using the previously validated cut-off for patients' classification. The primary endpoint was progression-free survival (PFS) at 5 years. Complete follow-up time (median = 112 months) was also considered as secondary analysis.

RESULTS

MiROvaR was assessable on 87 cases (19 events of disease progression) and classified 68 (78%) low-risk and 19 (22%) high-risk patients. Recurrence rate at primary end-point was 39% for high-risk patients as compared to 9.5% for low-risk ones. Accordingly, their Kaplan-Meier PFS curves were significantly different at both primary and secondary analysis (p = 0.0006 and p = 0.03, respectively). While none of the prominent clinical variables had prognostic relevance, MiROvaR significantly predicted disease recurrence at the 5-year assessment (primary endpoint analysis; HR:5.43, 95%CI:1.82-16.1, p = 0.0024; AUC = 0.78, 95%CI:0.53-0.82) and at complete follow-up time (HR:2.67, 95%CI:1.04-6.8, p = 0.041; AUC:0.68, 95%CI:0.52-0.82).

CONCLUSIONS

We validated MiROvaR performance in identifying at diagnosis eEOC patients' at higher risk of early relapse thus enabling selection of the most effective therapeutic approach.

摘要

目的

早期上皮性卵巢癌(eEOC)患者的预后通常较好,但复发情况不可预测。准确预测复发风险仍然是一个主要关注点,主要是为了避免过度治疗。我们的稳健基于组织的 miRNA 特征命名为 MiROvaR,可预测大多数晚期上皮性卵巢癌患者的早期 EOC 复发,在此,我们在一个独立的队列中对其进行了验证,以扩展其在早期 EOC 环境中的分类能力。

方法

我们回顾性地选择了在我院接受全面手术分期的患者,包括 IA 期至 IIB 期。对 89 例患者的 miRNA 表达谱进行了分析,并应用 MiROvaR 算法应用之前验证的用于患者分类的截止值。主要终点为 5 年无进展生存期(PFS)。完全随访时间(中位数=112 个月)也作为次要分析。

结果

MiROvaR 可评估 87 例病例(19 例疾病进展事件),并将 68 例(78%)低风险和 19 例(22%)高风险患者分类。高风险患者的复发率在主要终点为 39%,而低风险患者的复发率为 9.5%。相应地,他们的 Kaplan-Meier PFS 曲线在主要和次要分析中均有显著差异(p=0.0006 和 p=0.03)。虽然没有明显的临床变量具有预后相关性,但 MiROvaR 在 5 年评估时(主要终点分析;HR:5.43,95%CI:1.82-16.1,p=0.0024;AUC:0.78,95%CI:0.53-0.82)和在完全随访时间(HR:2.67,95%CI:1.04-6.8,p=0.041;AUC:0.68,95%CI:0.52-0.82)时显著预测疾病复发。

结论

我们验证了 MiROvaR 在识别早期复发风险较高的早期上皮性卵巢癌患者方面的性能,从而能够选择最有效的治疗方法。

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