在乳房X光片上应用深度学习,区分低风险和高风险DCIS,以便患者参与主动监测试验

IF 3.5 2区 医学 Q2 ONCOLOGY Cancer Imaging Pub Date : 2024-04-05 DOI:10.1186/s40644-024-00691-x
Sena Alaeikhanehshir, Madelon M. Voets, Frederieke H. van Duijnhoven, Esther H. lips, Emma J. Groen, Marja C. J. van Oirsouw, Shelley E. Hwang, Joseph Y. Lo, Jelle Wesseling, Ritse M. Mann, Jonas Teuwen
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引用次数: 0

摘要

乳腺导管原位癌(DCIS)可发展为浸润性乳腺癌,但大多数 DCIS 病变永远不会发展为浸润性乳腺癌。因此,四项临床试验(COMET、LORIS、LORETTA 和 LORD)检验了对患有低风险原位乳腺导管癌的女性进行主动监测是否安全(E. S. Hwang 等人,BMJ Open,9: e026797,2019 年;A. Francis 等人,Eur J Cancer.51: 2296-2303, 2015, Chizuko Kanbayashi et al. 低风险 DCIS(LORIS、LORD、COMET、LORETTA)主动监测试验国际合作,L. E. Elshof et al., Eur J Cancer, 51, 1497-510, 2015)。低风险定义为 I 级或 II 级 DCIS。由于DCIS分级是这些试验的一个主要资格标准,因此在手术前活检的DCIS组织病理学分级评估的基础上评估乳腺X光检查的DCIS分级将非常有帮助,因为大量参与这些试验的患者不会进行手术。评估卷积神经网络(CNN)的性能和临床实用性,以根据乳房X光特征区分高风险(III级)DCIS和/或浸润性乳腺癌(IBC)与低风险(I/II级)DCIS。我们探讨了 CNN 是否可用作决策支持工具,将高危患者排除在主动监测范围之外。在这项单中心回顾性研究中,共纳入了 464 名在 2000 年至 2014 年期间根据手术前活检确诊为 DCIS 的患者。收集的乳腺 X 射线图像在患者层面上分为两个子集,其中一个子集用于训练,包含 80% 的病例(371 例,681 幅图像),另一个子集用于测试,包含 20% 的病例(93 例,173 幅图像)。基于 U-Net CNN 的深度学习模型在 681 张二维乳腺照片上进行了训练和验证。用曲线下面积(AUC)接收器操作特征和测试集上的预测值来评估分类性能,以预测高风险 DCIS 和高风险 DCIS 及/或 IBC 与低风险 DCIS。在将 DCIS 划分为高风险时,深度学习网络在测试数据集上的阳性预测值(PPV)为 0.40,阴性预测值(NPV)为 0.91,AUC 为 0.72。在区分高风险和/或高分期 DCIS(隐匿性浸润性乳腺癌)与低风险 DCIS 时,PPV 为 0.80,NPV 为 0.84,AUC 为 0.76。对于两种情况(DCIS I/II 级 vs. III 级、DCIS I/II 级 vs. III 级和/或 IBC),AUC 都很高,分别为 0.72 和 0.76,结论是我们的卷积神经网络可以区分低级别和高级别 DCIS。- 人工智能可在区分高危和低危 DCIS 方面发挥作用。- 所开发的卷积神经网络可以很好地区分高危和低危 DCIS 和/或 IBC。- 0.84 的 NPV 值可能与 DCIS 主动监测试验的临床相关性。
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Application of deep learning on mammographies to discriminate between low and high-risk DCIS for patient participation in active surveillance trials
Ductal Carcinoma In Situ (DCIS) can progress to invasive breast cancer, but most DCIS lesions never will. Therefore, four clinical trials (COMET, LORIS, LORETTA, AND LORD) test whether active surveillance for women with low-risk Ductal carcinoma In Situ is safe (E. S. Hwang et al., BMJ Open, 9: e026797, 2019, A. Francis et al., Eur J Cancer. 51: 2296–2303, 2015, Chizuko Kanbayashi et al. The international collaboration of active surveillance trials for low-risk DCIS (LORIS, LORD, COMET, LORETTA), L. E. Elshof et al., Eur J Cancer, 51, 1497–510, 2015). Low-risk is defined as grade I or II DCIS. Because DCIS grade is a major eligibility criteria in these trials, it would be very helpful to assess DCIS grade on mammography, informed by grade assessed on DCIS histopathology in pre-surgery biopsies, since surgery will not be performed on a significant number of patients participating in these trials. To assess the performance and clinical utility of a convolutional neural network (CNN) in discriminating high-risk (grade III) DCIS and/or Invasive Breast Cancer (IBC) from low-risk (grade I/II) DCIS based on mammographic features. We explored whether the CNN could be used as a decision support tool, from excluding high-risk patients for active surveillance. In this single centre retrospective study, 464 patients diagnosed with DCIS based on pre-surgery biopsy between 2000 and 2014 were included. The collection of mammography images was partitioned on a patient-level into two subsets, one for training containing 80% of cases (371 cases, 681 images) and 20% (93 cases, 173 images) for testing. A deep learning model based on the U-Net CNN was trained and validated on 681 two-dimensional mammograms. Classification performance was assessed with the Area Under the Curve (AUC) receiver operating characteristic and predictive values on the test set for predicting high risk DCIS-and high-risk DCIS and/ or IBC from low-risk DCIS. When classifying DCIS as high-risk, the deep learning network achieved a Positive Predictive Value (PPV) of 0.40, Negative Predictive Value (NPV) of 0.91 and an AUC of 0.72 on the test dataset. For distinguishing high-risk and/or upstaged DCIS (occult invasive breast cancer) from low-risk DCIS a PPV of 0.80, a NPV of 0.84 and an AUC of 0.76 were achieved. For both scenarios (DCIS grade I/II vs. III, DCIS grade I/II vs. III and/or IBC) AUCs were high, 0.72 and 0.76, respectively, concluding that our convolutional neural network can discriminate low-grade from high-grade DCIS. • Artificial intelligence could play a role in discriminating high- from low-risk DCIS. • The developed CNN could fairly discriminate high- from low-risk DCIS and/or IBC. • The NPV 0.84 may be clinically relevant for DCIS active surveillance trials.
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来源期刊
Cancer Imaging
Cancer Imaging ONCOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
7.00
自引率
0.00%
发文量
66
审稿时长
>12 weeks
期刊介绍: Cancer Imaging is an open access, peer-reviewed journal publishing original articles, reviews and editorials written by expert international radiologists working in oncology. The journal encompasses CT, MR, PET, ultrasound, radionuclide and multimodal imaging in all kinds of malignant tumours, plus new developments, techniques and innovations. Topics of interest include: Breast Imaging Chest Complications of treatment Ear, Nose & Throat Gastrointestinal Hepatobiliary & Pancreatic Imaging biomarkers Interventional Lymphoma Measurement of tumour response Molecular functional imaging Musculoskeletal Neuro oncology Nuclear Medicine Paediatric.
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