Dual-path network with synergistic grouping loss and evidence driven risk stratification for whole slide cervical image analysis

Med Image Anal. 2021 Apr:69:101955. doi: 10.1016/j.media.2021.101955. Epub 2021 Feb 2.

Abstract

Cervical cancer has been one of the most lethal cancers threatening women's health. Nevertheless, the incidence of cervical cancer can be effectively minimized with preventive clinical management strategies, including vaccines and regular screening examinations. Screening cervical smears under microscope by cytologist is a widely used routine in regular examination, which consumes cytologists' large amount of time and labour. Computerized cytology analysis appropriately caters to such an imperative need, which alleviates cytologists' workload and reduce potential misdiagnosis rate. However, automatic analysis of cervical smear via digitalized whole slide images (WSIs) remains a challenging problem, due to the extreme huge image resolution, existence of tiny lesions, noisy dataset and intricate clinical definition of classes with fuzzy boundaries. In this paper, we design an efficient deep convolutional neural network (CNN) with dual-path (DP) encoder for lesion retrieval, which ensures the inference efficiency and the sensitivity on both tiny and large lesions. Incorporated with synergistic grouping loss (SGL), the network can be effectively trained on noisy dataset with fuzzy inter-class boundaries. Inspired by the clinical diagnostic criteria from the cytologists, a novel smear-level classifier, i.e., rule-based risk stratification (RRS), is proposed for accurate smear-level classification and risk stratification, which aligns reasonably with intricate cytological definition of the classes. Extensive experiments on the largest dataset including 19,303 WSIs from multiple medical centers validate the robustness of our method. With high sensitivity of 0.907 and specificity of 0.80 being achieved, our method manifests the potential to reduce the workload for cytologists in the routine practice.

Keywords: Cervical cancer analysis; Deep learning; Digital pathology; Papanicolaou (PAP) smears; Whole slide image.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Female
  • Humans
  • Image Processing, Computer-Assisted
  • Neural Networks, Computer
  • Risk Assessment
  • Uterine Cervical Neoplasms* / diagnostic imaging
  • Vaginal Smears*