Department of Breast Surgery, Harbin Medical University Cancer Hospital, Harbin, China.
Department of Breast Surgery, The Third Affiliated Hospital of Kunming Medical University, Kunming, China.
BMC Womens Health. 2024 Oct 12;24(1):560. doi: 10.1186/s12905-024-03400-9.
Achieving a pathological complete response (pCR) after neoadjuvant therapy (NAT) is considered to be a critical factor for a favourable prognosis in breast cancer. However, discordant pathological complete response (DpCR), characterised by isolated responses in the breast or axillary, represents an intermediate pathological response category between no response and complete response. This study aims to investigate predictive factors and develop models based on peripheral blood inflammatory indexes to more accurately predict NAT outcomes.
A total of 789 eligible patients were enrolled in this retrospective study. The patients were randomized into training and validation cohort according to a 7:3 ratio. Lasso and uni/multivariable logistic regression analysis were applied to identify the predictor variables. Two Nomograms combining clinico-pathologic features and peripheral blood inflammatory indexes were developed.
Molecular Subtype, HALP, P53, and FAR were used to construct the predictive models for traditional non pCR (T-NpCR) and total-pCR (TpCR). The T-NpCR group was divided into DpCR and non pCR (NpCR) subgroups to construct a new model to more accurately predict NAT outcomes. cN, HALP, FAR, Molecular Subtype, and RMC were used to construct the predictive models for NpCR and DpCR. The receiver operating characteristic (ROC) curves indicate that the model exhibits robust predictive capacity. Clinical Impact Curves (CIC) and Decision Curve Analysis (DCA) indicate that the models present a superior clinical utility.
HALP and FAR were identified as peripheral blood inflammatory index predictors for accurately predicting NAT outcomes.
新辅助治疗(NAT)后达到病理完全缓解(pCR)被认为是乳腺癌预后良好的关键因素。然而,存在于乳腺或腋窝的孤立反应为特征的不相符病理完全缓解(DpCR),代表了介于无反应和完全反应之间的中间病理反应类别。本研究旨在探讨预测因素,并基于外周血炎症指标建立模型,以更准确地预测 NAT 结果。
本回顾性研究共纳入 789 例符合条件的患者。根据 7:3 的比例将患者随机分为训练集和验证集。应用 Lasso 和单变量/多变量逻辑回归分析来确定预测变量。建立了两个结合临床病理特征和外周血炎症指标的列线图。
分子亚型、HALP、P53 和 FAR 用于构建传统非 pCR(T-NpCR)和总 pCR(TpCR)的预测模型。将 T-NpCR 组分为 DpCR 和非 pCR(NpCR)亚组,以构建一个新的模型来更准确地预测 NAT 结果。cN、HALP、FAR、分子亚型和 RMC 用于构建 NpCR 和 DpCR 的预测模型。ROC 曲线表明该模型具有稳健的预测能力。临床影响曲线(CIC)和决策曲线分析(DCA)表明,这些模型具有较好的临床实用性。
HALP 和 FAR 被确定为外周血炎症指标预测因子,可准确预测 NAT 结果。