C. Jailin, Pablo Milioni de Carvalho, Zhijin Li, R. Iordache, S. Muller
{"title":"Lesion detection in contrast enhanced spectral mammography","authors":"C. Jailin, Pablo Milioni de Carvalho, Zhijin Li, R. Iordache, S. Muller","doi":"10.1117/12.2624577","DOIUrl":null,"url":null,"abstract":"Background and purpose: The recent emergence of neural networks models for the analysis of breast images has been a breakthrough in computer aided diagnostic. This approach was not yet developed in Contrast Enhanced Spectral Mammography (CESM) where access to large databases is complex. This work proposes a deep-learning-based Computer Aided Diagnostic development for CESM recombined images able to detect lesions and classify cases. Material and methods: A large CESM diagnostic dataset with biopsy-proven lesions was collected from various hospitals and different acquisition systems. The annotated data were split on a patient level for the training (55%), validation (15%) and test (30%) of a deep neural network with a state-of-the-art detection architecture. Free Receiver Operating Characteristic (FROC) was used to evaluate the model for the detection of 1) all lesions, 2) biopsied lesions and 3) malignant lesions. ROC curve was used to evaluate breast cancer classification. The metrics were finally compared to clinical results. Results: For the evaluation of the malignant lesion detection, at high sensitivity (Se<0.95), the false positive rate was at 0.61 per image. For the classification of malignant cases, the model reached an Area Under the Curve (AUC) in the range of clinical CESM diagnostic results. Conclusion: This CAD is the first development of a lesion detection and classification model for CESM images. Trained on a large dataset, it has the potential to be used for helping the management of biopsy decision and for helping the radiologist detecting complex lesions that could modify the clinical treatment.","PeriodicalId":92005,"journal":{"name":"Breast imaging : 11th International Workshop, IWDM 2012, Philadelphia, PA, USA, July 8-11, 2012 : proceedings. International Workshop on Breast Imaging (11th : 2012 : Philadelphia, Pa.)","volume":"21 1","pages":"122860A - 122860A-8"},"PeriodicalIF":0.0000,"publicationDate":"2022-07-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Breast imaging : 11th International Workshop, IWDM 2012, Philadelphia, PA, USA, July 8-11, 2012 : proceedings. International Workshop on Breast Imaging (11th : 2012 : Philadelphia, Pa.)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1117/12.2624577","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 2
Abstract
Background and purpose: The recent emergence of neural networks models for the analysis of breast images has been a breakthrough in computer aided diagnostic. This approach was not yet developed in Contrast Enhanced Spectral Mammography (CESM) where access to large databases is complex. This work proposes a deep-learning-based Computer Aided Diagnostic development for CESM recombined images able to detect lesions and classify cases. Material and methods: A large CESM diagnostic dataset with biopsy-proven lesions was collected from various hospitals and different acquisition systems. The annotated data were split on a patient level for the training (55%), validation (15%) and test (30%) of a deep neural network with a state-of-the-art detection architecture. Free Receiver Operating Characteristic (FROC) was used to evaluate the model for the detection of 1) all lesions, 2) biopsied lesions and 3) malignant lesions. ROC curve was used to evaluate breast cancer classification. The metrics were finally compared to clinical results. Results: For the evaluation of the malignant lesion detection, at high sensitivity (Se<0.95), the false positive rate was at 0.61 per image. For the classification of malignant cases, the model reached an Area Under the Curve (AUC) in the range of clinical CESM diagnostic results. Conclusion: This CAD is the first development of a lesion detection and classification model for CESM images. Trained on a large dataset, it has the potential to be used for helping the management of biopsy decision and for helping the radiologist detecting complex lesions that could modify the clinical treatment.
背景与目的:近年来出现的用于乳腺图像分析的神经网络模型是计算机辅助诊断的一个突破。这种方法尚未在对比增强光谱乳房x线照相术(CESM)中发展起来,因为访问大型数据库是复杂的。这项工作提出了一种基于深度学习的计算机辅助诊断开发,用于能够检测病变和分类病例的CESM重组图像。材料和方法:从不同的医院和不同的采集系统收集了具有活检证实病变的大型CESM诊断数据集。标注的数据在患者层面上进行分割,用于具有最先进检测架构的深度神经网络的训练(55%)、验证(15%)和测试(30%)。利用自由受者工作特征(FROC)评价该模型对1)所有病变、2)活检病变和3)恶性病变的检测能力。采用ROC曲线评价乳腺癌的分型。最后将这些指标与临床结果进行比较。结果:对于恶性病变检测的评价,在高灵敏度(Se<0.95)下,假阳性率为0.61 /张。对于恶性病例的分类,该模型在临床CESM诊断结果范围内达到曲线下面积(Area Under the Curve, AUC)。结论:该CAD是CESM图像病变检测和分类模型的首次发展。在一个大数据集上训练,它有可能被用于帮助活检决策的管理,并帮助放射科医生检测复杂的病变,从而改变临床治疗。