Shi Jindou, Tu Haohua, Park Jaena, Marjanovic Marina, Higham Anna M, Luckey Natasha N, Cradock Kimberly A, Liu Z George, Boppart Stephen A
Department of Electrical and Computer Engineering, University of Illinois at Urbana-Champaign, 306 N Wright Street, Urbana, IL 61801, USA.
Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign, 405 N Mathews Avenue, Urbana, IL 61801, USA.
Biomed Opt Express. 2023 Mar 2;14(4):1339-1354. doi: 10.1364/BOE.480687. eCollection 2023 Apr 1.
With the latest advancements in optical bioimaging, rich structural and functional information has been generated from biological samples, which calls for capable computational tools to identify patterns and uncover relationships between optical characteristics and various biomedical conditions. Constrained by the existing knowledge of the novel signals obtained by those bioimaging techniques, precise and accurate ground truth annotations can be difficult to obtain. Here we present a weakly supervised deep learning framework for optical signature discovery based on inexact and incomplete supervision. The framework consists of a multiple instance learning-based classifier for the identification of regions of interest in coarsely labeled images and model interpretation techniques for optical signature discovery. We applied this framework to investigate human breast cancer-related optical signatures based on virtual histopathology enabled by simultaneous label-free autofluorescence multiharmonic microscopy (SLAM), with the goal of exploring unconventional cancer-related optical signatures from normal-appearing breast tissues. The framework has achieved an average area under the curve (AUC) of 0.975 on the cancer diagnosis task. In addition to well-known cancer biomarkers, non-obvious cancer-related patterns were revealed by the framework, including NAD(P)H-rich extracellular vesicles observed in normal-appearing breast cancer tissue, which facilitate new insights into the tumor microenvironment and field cancerization. This framework can be further extended to diverse imaging modalities and optical signature discovery tasks.
随着光学生物成像技术的最新进展,已从生物样本中生成了丰富的结构和功能信息,这就需要有强大的计算工具来识别模式,并揭示光学特征与各种生物医学状况之间的关系。由于受到那些生物成像技术所获得的新信号的现有知识的限制,精确和准确的真实标注可能难以获得。在此,我们提出了一种基于不精确和不完整监督的用于光学特征发现的弱监督深度学习框架。该框架由一个基于多实例学习的分类器组成,用于识别粗略标注图像中的感兴趣区域,以及用于光学特征发现的模型解释技术。我们将此框架应用于基于同时无标记自发荧光多谐波显微镜(SLAM)实现的虚拟组织病理学来研究与人类乳腺癌相关的光学特征,目的是从外观正常的乳腺组织中探索非常规的癌症相关光学特征。该框架在癌症诊断任务上的曲线下面积(AUC)平均达到了0.975。除了众所周知的癌症生物标志物外,该框架还揭示了非明显的癌症相关模式,包括在外观正常的乳腺癌组织中观察到的富含烟酰胺腺嘌呤二核苷酸(磷酸)(NAD(P)H)的细胞外囊泡,这有助于对肿瘤微环境和场癌化有新的认识。该框架可以进一步扩展到多种成像模态和光学特征发现任务。