Stepan Romanov, Sacha Howell, Elaine Harkness, Megan Bydder, D Gareth Evans, Steven Squires, Martin Fergie, Sue Astley
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引用次数: 0
摘要
准确预测个体乳腺癌风险为个性化预防和早期检测铺平了道路。研究表明,纳入遗传信息和乳腺密度可提高现有模型的预测效果,但基于图像的详细特征尽管与风险相关,却尚未被纳入其中。使用深度学习算法可以从乳房 X 光照片中提取复杂的信息,但这是一个具有挑战性的研究领域,部分原因是该领域缺乏数据,部分原因是计算负担。我们提出了一种基于注意力的多实例学习(MIL)模型,该模型能从全分辨率癌症检测前的乳房 X 光照片中做出准确的短期风险预测。在模型开发过程中,将当前筛查出的癌症与先验因素混合在一起,以促进检测与风险相关的特征和与癌症形成相关的特征,同时缓解数据稀缺的问题。在对 5 到 55 个月内筛查出癌症或间隔期癌症的妇女进行无癌症乳房 X 线照片筛查时,MAI-风险的 AUC 达到了 0.747 [0.711, 0.783],在考虑既定临床风险因素的情况下,其 AUC 优于 IBIS(AUC 0.594 [0.557, 0.633])和 VAS(AUC 0.649 [0.614, 0.683])。
Artificial Intelligence for Image-Based Breast Cancer Risk Prediction Using Attention.
Accurate prediction of individual breast cancer risk paves the way for personalised prevention and early detection. The incorporation of genetic information and breast density has been shown to improve predictions for existing models, but detailed image-based features are yet to be included despite correlating with risk. Complex information can be extracted from mammograms using deep-learning algorithms, however, this is a challenging area of research, partly due to the lack of data within the field, and partly due to the computational burden. We propose an attention-based Multiple Instance Learning (MIL) model that can make accurate, short-term risk predictions from mammograms taken prior to the detection of cancer at full resolution. Current screen-detected cancers are mixed in with priors during model development to promote the detection of features associated with risk specifically and features associated with cancer formation, in addition to alleviating data scarcity issues. MAI-risk achieves an AUC of 0.747 [0.711, 0.783] in cancer-free screening mammograms of women who went on to develop a screen-detected or interval cancer between 5 and 55 months, outperforming both IBIS (AUC 0.594 [0.557, 0.633]) and VAS (AUC 0.649 [0.614, 0.683]) alone when accounting for established clinical risk factors.
TomographyMedicine-Radiology, Nuclear Medicine and Imaging
CiteScore
2.70
自引率
10.50%
发文量
222
期刊介绍:
TomographyTM publishes basic (technical and pre-clinical) and clinical scientific articles which involve the advancement of imaging technologies. Tomography encompasses studies that use single or multiple imaging modalities including for example CT, US, PET, SPECT, MR and hyperpolarization technologies, as well as optical modalities (i.e. bioluminescence, photoacoustic, endomicroscopy, fiber optic imaging and optical computed tomography) in basic sciences, engineering, preclinical and clinical medicine.
Tomography also welcomes studies involving exploration and refinement of contrast mechanisms and image-derived metrics within and across modalities toward the development of novel imaging probes for image-based feedback and intervention. The use of imaging in biology and medicine provides unparalleled opportunities to noninvasively interrogate tissues to obtain real-time dynamic and quantitative information required for diagnosis and response to interventions and to follow evolving pathological conditions. As multi-modal studies and the complexities of imaging technologies themselves are ever increasing to provide advanced information to scientists and clinicians.
Tomography provides a unique publication venue allowing investigators the opportunity to more precisely communicate integrated findings related to the diverse and heterogeneous features associated with underlying anatomical, physiological, functional, metabolic and molecular genetic activities of normal and diseased tissue. Thus Tomography publishes peer-reviewed articles which involve the broad use of imaging of any tissue and disease type including both preclinical and clinical investigations. In addition, hardware/software along with chemical and molecular probe advances are welcome as they are deemed to significantly contribute towards the long-term goal of improving the overall impact of imaging on scientific and clinical discovery.