Key Laboratory of OptoElectronic Science and Technology for Medicine of Ministry of Education, Fujian Provincial Key Laboratory of Photonics Technology, Fujian Normal University, Fuzhou, 350007, China.
Department of Breast Surgery, Fujian Medical University Union Hospital, Fuzhou, 350001, China.
Cell Oncol (Dordr). 2024 Feb;47(1):69-80. doi: 10.1007/s13402-023-00851-4. Epub 2023 Aug 22.
Collagen features in breast tumor microenvironment is closely associated with the prognosis of patients. We aim to explore the prognostic significance of collagen features at breast tumor border by combining multiphoton imaging and imaging analysis.
We used multiphoton microscopy (MPM) to label-freely image human breast tumor samples and then constructed an automatic classification model based on deep learning to identify collagen signatures from multiphoton images. We recognized three kinds of collagen signatures at tumor boundary (CSTB I-III) in a small-scale, and furthermore obtained a CSTB score for each patient based on the combined CSTB I-III by using the ridge regression analysis. The prognostic performance of CSTB score is assessed by the area under the receiver operating characteristic curve (AUC), Cox proportional hazard regression analysis, as well as Kaplan-Meier survival analysis.
As an independent prognostic factor, statistical results reveal that the prognostic performance of CSTB score is better than that of the clinical model combining three independent prognostic indicators, molecular subtype, tumor size, and lymph nodal metastasis (AUC, Training dataset: 0.773 vs. 0.749; External validation: 0.753 vs. 0.724; HR, Training dataset: 4.18 vs. 3.92; External validation: 4.98 vs. 4.16), and as an auxiliary indicator, it can greatly improve the accuracy of prognostic prediction. And furthermore, a nomogram combining the CSTB score with the clinical model is established for prognosis prediction and clinical decision making.
This standardized and automated imaging prognosticator may convince pathologists to adopt it as a prognostic factor, thereby customizing more effective treatment plans for patients.
乳腺肿瘤微环境中的胶原特征与患者的预后密切相关。我们旨在通过多光子成像和图像分析来探索乳腺肿瘤边界胶原特征的预后意义。
我们使用多光子显微镜(MPM)对人乳腺肿瘤样本进行无标记自由成像,然后构建基于深度学习的自动分类模型,从多光子图像中识别胶原特征。我们在小范围内识别了肿瘤边界的三种胶原特征(CSTB I-III),并进一步通过脊回归分析,根据联合的 CSTB I-III 为每位患者获得一个 CSTB 评分。通过接受者操作特征曲线下面积(AUC)、Cox 比例风险回归分析和 Kaplan-Meier 生存分析来评估 CSTB 评分的预后性能。
作为一个独立的预后因素,统计结果表明,CSTB 评分的预后性能优于结合三个独立预后指标(分子亚型、肿瘤大小和淋巴结转移)的临床模型(AUC,训练数据集:0.773 与 0.749;外部验证:0.753 与 0.724;HR,训练数据集:4.18 与 3.92;外部验证:4.98 与 4.16),作为辅助指标,它可以大大提高预后预测的准确性。此外,建立了一个结合 CSTB 评分和临床模型的列线图,用于预后预测和临床决策。
这种标准化和自动化的成像预后指标可能会使病理学家信服地将其作为预后因素采用,从而为患者定制更有效的治疗计划。