Adaptive Machine Learning Approach for Importance Evaluation of Multimodal Breast Cancer Radiomic Features.

Giulio Del Corso, Danila Germanese, Claudia Caudai, Giada Anastasi, Paolo Belli, Alessia Formica, Alberto Nicolucci, Simone Palma, Maria Antonietta Pascali, Stefania Pieroni, Charlotte Trombadori, Sara Colantonio, Michela Franchini, Sabrina Molinaro
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Abstract

Breast cancer holds the highest diagnosis rate among female tumors and is the leading cause of death among women. Quantitative analysis of radiological images shows the potential to address several medical challenges, including the early detection and classification of breast tumors. In the P.I.N.K study, 66 women were enrolled. Their paired Automated Breast Volume Scanner (ABVS) and Digital Breast Tomosynthesis (DBT) images, annotated with cancerous lesions, populated the first ABVS+DBT dataset. This enabled not only a radiomic analysis for the malignant vs. benign breast cancer classification, but also the comparison of the two modalities. For this purpose, the models were trained using a leave-one-out nested cross-validation strategy combined with a proper threshold selection approach. This approach provides statistically significant results even with medium-sized data sets. Additionally it provides distributional variables of importance, thus identifying the most informative radiomic features. The analysis proved the predictive capacity of radiomic models even using a reduced number of features. Indeed, from tomography we achieved AUC-ROC 89.9 % using 19 features and 92.1 % using 7 of them; while from ABVS we attained an AUC-ROC of 72.3 % using 22 features and 85.8 % using only 3 features. Although the predictive power of DBT outperforms ABVS, when comparing the predictions at the patient level, only 8.7% of lesions are misclassified by both methods, suggesting a partial complementarity. Notably, promising results (AUC-ROC ABVS-DBT 71.8 % - 74.1 % ) were achieved using non-geometric features, thus opening the way to the integration of virtual biopsy in medical routine.

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多模态乳腺癌放射学特征重要性评估的自适应机器学习方法
乳腺癌是女性肿瘤中诊断率最高的一种,也是女性死亡的主要原因。放射图像的定量分析显示出解决一些医学难题的潜力,包括乳腺肿瘤的早期检测和分类。P.I.N.K研究共招募了66名妇女。她们的配对自动乳腺容积扫描仪(ABVS)和数字乳腺断层合成术(DBT)图像标注了癌症病灶,组成了第一个 ABVS+DBT 数据集。这样不仅能对恶性与良性乳腺癌分类进行放射学分析,还能对两种模式进行比较。为此,模型的训练采用了 "留一 "嵌套交叉验证策略,并结合了适当的阈值选择方法。即使是中等规模的数据集,这种方法也能提供具有统计意义的结果。此外,它还提供了重要的分布变量,从而确定了信息量最大的放射学特征。分析证明,即使使用较少数量的特征,放射体模型也具有预测能力。事实上,在断层扫描中,我们使用 19 个特征获得了 AUC-ROC 89.9%,使用其中 7 个特征获得了 AUC-ROC 92.1%;而在 ABVS 中,我们使用 22 个特征获得了 AUC-ROC 72.3%,仅使用 3 个特征获得了 AUC-ROC 85.8%。虽然 DBT 的预测能力优于 ABVS,但在比较患者层面的预测结果时,两种方法都只误诊了 8.7% 的病变,这表明两种方法具有部分互补性。值得注意的是,使用非几何特征也取得了令人鼓舞的结果(AUC-ROC ABVS-DBT 71.8 % - 74.1 %),从而为将虚拟活检纳入医疗常规开辟了道路。
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