Investigator

Ronald X. Xu

Professor · USTC Suzhou Institute of Advanced Research

RXXRonald X. Xu
Papers(1)
SCAC: A Semi-Supervis…
Collaborators(6)
Shuwei ShenZheng ZhangLiang ZengMingxiao ChenPengfei ShaoPeng Yao
Institutions(3)
University Of Science…Yuhuangding HospitalUnknown Institution

Papers

SCAC: A Semi-Supervised Learning Approach for Cervical Abnormal Cell Detection

Cervical abnormal cell detection plays a crucial role in the early screening of cervical cancer. In recent years, some deep learning-based methods have been proposed. However, these methods rely heavily on large amounts of annotated images, which are time-consuming and labor-intensive to acquire, thus limiting the detection performance. In this paper, we present a novel Semi-supervised Cervical Abnormal Cell detector (SCAC), which effectively utilizes the abundant unlabeled data. We utilize Transformer as the backbone of SCAC to capture long-range dependencies to mimic the diagnostic process of pathologists. In addition, in SCAC, we design a Unified Strong and Weak Augment strategy (USWA) that unifies two data augmentation pipelines, implementing consistent regularization in semi-supervised learning and enhancing the diversity of the training data. We also develop a Global Attention Feature Pyramid Network (GAFPN), which utilizes the attention mechanism to better extract multi-scale features from cervical cytology images. Notably, we have created an unlabeled cervical cytology image dataset, which can be leveraged by semi-supervised learning to enhance detection accuracy. To the best of our knowledge, this is the first publicly available large unlabeled cervical cytology image dataset. By combining this dataset with two publicly available annotated datasets, we demonstrate that SCAC outperforms other existing methods, achieving state-of-the-art performance. Additionally, comprehensive ablation studies are conducted to validate the effectiveness of USWA and GAFPN. These promising results highlight the capability of SCAC to achieve high diagnostic accuracy and extensive clinical applications.

1Papers
6Collaborators

Positions

2021–

Professor

USTC Suzhou Institute of Advanced Research

2012–

Associate Professor

The Ohio State University · Biomedical Engineering

2004–

Assistant Professor

The Ohio State University · Biomedical Engineering

Education

1999

PhD

Massachusetts Institute of Technology · Mechanical Engineering

1995

MS

Stony Brook University · Mechanical Engineering

1992

BS

University of Science and Technology of China · Precision Machinery and Instrumentation

Country

CN

Keywords
Medical devicemultimodal imagingsurgical navigation3D printingdrug delivery