The Lifecycle of a Neural Network in the Wild: A Multiple Instance Learning Study on Cancer Detection from Breast Biopsies Imaged with Novel Technique

D. Mandache, E. B. Á. L. Guillaume, Y. Badachi, J. Olivo-Marin, V. Meas-Yedid
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Abstract

In the context of tissue examination for breast cancer assessment, we propose a label-free imaging based on Optical Coherence Tomography (OCT) signal combined with a multiple instance learning (MIL) model to respond to a critical need for fast at point-of-care diagnosis: biopsy or surgery time. This new imaging, Dynamic Cell Imaging (DCI), is the time-resolved variant of Full-Field OCT (FFOCT) and offers an intra-cellular resolution of about 1 micron, together with optical sectioning and an improved cell contrast. In order to tackle the challenges of limited data and annotations, while remaining in the scope of interpretability, we design an instance-level MIL model with a focus on adapted data sampling. The interest of this method is that it incorporates task-specific feature learning and also produces instance predictions. For a dataset of 150 core-needle biopsies, we achieve a considerable improvement of more than 20 percentage points in specificity and about 10 in accuracy by leveraging intra-domain (as compared to extra-domain) pre-training.
野外神经网络的生命周期:用新技术从乳腺活检图像中检测癌症的多实例学习研究
在乳腺癌组织检查评估的背景下,我们提出了一种基于光学相干断层扫描(OCT)信号的无标签成像技术,结合多实例学习(MIL)模型,以响应快速的即时诊断的关键需求:活检或手术时间。这种新的成像,动态细胞成像(DCI),是全视野OCT (FFOCT)的时间分辨率变体,提供约1微米的细胞内分辨率,以及光学切片和改进的细胞对比度。为了解决有限数据和注释的挑战,同时保持在可解释性范围内,我们设计了一个实例级MIL模型,重点关注自适应数据采样。这种方法的有趣之处在于,它结合了特定于任务的特征学习,并产生了实例预测。对于150个核心针活检的数据集,我们通过利用域内(与域外相比)预训练,在特异性上取得了超过20个百分点的显著提高,在准确性上取得了大约10个百分点的提高。
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