时间序列数字乳房x线照片的减法:近期乳腺癌发生的预测和定位。

Kosmia Loizidou, Galateia Skouroumouni, Gabriella Savvidou, Anastasia Constantinidou, Eleni Orphanidou Vlachou, Anneza Yiallourou, Costas Pitris, Christos Nikolaou
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引用次数: 0

摘要

目的是在连续两轮正常乳房x光检查后预测近期可能发生的乳房肿块。这项研究在2020年至2024年间进行,收集了75名年龄在46岁至79岁之间的女性的连续三轮乳房x光检查。连续筛查的平均间隔为~ 2年。在每种情况下,每个乳房的两张乳房x光片被收集,从而产生一个总共450张图像(3 × 2 × 75)的数据集。最近的乳房x光检查被认为是“未来的”筛查轮,它提供了活检确认的恶性肿块的位置,作为培训的基本事实。之前的两张正常的乳房x光片(“先验”和“当前”)被处理,并为预测创建一个新的减去图像。然后,应用区域分割和后处理,以及图像特征的提取和选择。选择的特征被合并到几个分类器中,通过对每个患者进行留一个患者和k倍交叉验证,感兴趣的区域被表征为良性或可能的未来恶性肿瘤。研究对象包括75名女性(平均年龄:62.5±7.2;平均年龄62岁)。从良性和未来可能的恶性肿瘤区域进行特征选择,发现14个特征提供了最佳的分类。使用集合投票获得了最准确的分类性能,准确率为98.8%,灵敏度为93.6%,特异性为98.8%,AUC为0.96。鉴于该算法的成功,其临床应用可以使识别为有风险的患者早期诊断和改善预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subtraction of Temporally Sequential Digital Mammograms: Prediction and Localization of Near-Term Breast Cancer Occurrence.

The objective is to predict a possible near-term occurrence of a breast mass after two consecutive screening rounds with normal mammograms. For the purposes of this study, conducted between 2020 and 2024, three consecutive rounds of mammograms were collected from 75 women, 46 to 79 years old. Successive screenings had an average interval of 2 years. In each case, two mammographic views of each breast were collected, resulting in a dataset with a total of 450 images (3 × 2 × 75). The most recent mammogram was considered the "future" screening round and provided the location of a biopsy-confirmed malignant mass, serving as the ground truth for the training. The two normal previous mammograms ("prior" and "current") were processed and a new subtracted image was created for the prediction. Region segmentation and post-processing were, then, applied, along with image feature extraction and selection. The selected features were incorporated into several classifiers and by applying leave-one-patient-out and k-fold cross-validation per patient, the regions of interest were characterized as benign or possible future malignancy. Study participants included 75 women (mean age, 62.5 ± 7.2; median age, 62 years). Feature selection from benign and possible future malignancy areas revealed that 14 features provided the best classification. The most accurate classification performance was achieved using ensemble voting, with 98.8% accuracy, 93.6% sensitivity, 98.8% specificity, and 0.96 AUC. Given the success of this algorithm, its clinical application could enable earlier diagnosis and improve prognosis for patients identified as at risk.

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