Investigator

Fusong Jiang

Doctor · Shanghai Sixth's peoples Hospital Affiliated to Shanghai Jiaotong University School of Medicine, Endocrinology and Metabolism

Research Interests

FJFusong Jiang
Papers(1)
Quantitative analysis…
Collaborators(1)
Yiqing Shen
Institutions(1)
Shanghai Jiao Tong Un…

Papers

Quantitative analysis of abnormalities in gynecologic cytopathology with deep learning

Cervical cancer is one of the most frequent cancers in women worldwide, yet the early detection and treatment of lesions via regular cervical screening have led to a drastic reduction in the mortality rate. However, the routine examination of screening as a regular health checkup of women is characterized as time-consuming and labor-intensive, while there is lack of characteristic phenotypic profile and quantitative analysis. In this research, over the analysis of a privately collected and manually annotated dataset of 130 cytological whole-slide images, the authors proposed a deep-learning diagnostic system to localize, grade, and quantify squamous cell abnormalities. The system can distinguish abnormalities at the morphology level, namely atypical squamous cells of undetermined significance, low-grade squamous intraepithelial lesion, high-grade squamous intraepithelial lesion, and squamous cell carcinoma, as well as differential phenotypes of normal cells. The case study covered 51 positive and 79 negative digital gynecologic cytology slides collected from 2016 to 2018. Our automatic diagnostic system demonstrated its sensitivity of 100% at slide-level abnormality prediction, with the confirmation with three pathologists who performed slide-level diagnosis and training sample annotations. In the cellular-level classification, we yielded an accuracy of 94.5% in the binary classification between normality and abnormality, and the AUC was above 85% for each subtype of epithelial abnormality. Although the final confirmation from pathologists is often a must, empirically, computer-aided methods are capable of the effective extraction, interpretation, and quantification of morphological features, while also making it more objective and reproducible.

27Works
1Papers
1Collaborators
Neoplasm GradingUterine Cervical Neoplasms

Positions

2012–

Doctor

Shanghai Sixth's peoples Hospital Affiliated to Shanghai Jiaotong University School of Medicine · Endocrinology and Metabolism

Education

2015

博士

苏州大学 · 医学部

Country

CN