Artificial classification of cervical squamous lesions in ThinPrep cytologic tests using a deep convolutional neural network.

Artificial classification of cervical squamous lesions in ThinPrep cytologic tests using a deep convolutional neural network. Oncol Lett. 2020 Oct;20(4):113 Authors: Liu L, Wang Y, Ma Q, Tan L, Wu Y, Xiao J Abstract The diagnosis of squamous cell carcinoma requires the accurate classification of cervical squamous lesions in the ThinPrep cytologic test (TCT). It primarily relies on a pathologist's interpretation under a microscope. Deep convolutional neural networks (DCNN) have played an increasingly important role in digital pathology. However, they have not been applied to diverse datasets and externally validated. In the present study, a DCNN model based on VGG16 and an ensemble training strategy (ETS) based on 5-fold cross-validation was employed to automatically classify normal and abnormal cervical squamous cells from a multi-center dataset. First, we collected a dataset comprising 82 TCT samples from four hospitals and fine-tuned our model twice on the dataset with and without the ETS. Then, we compared the classifications obtained from the models with those provided by two skilled pathologists to discriminate the performance of the models in terms of classification accuracy and efficiency. Finally, paired sample t-tests were used to validate the consistency between the classification provided by the proposed methods and that of the pathologists. The results showed that ETS slightly, though not significantly, improved the class...
Source: Oncology Letters - Category: Cancer & Oncology Tags: Oncol Lett Source Type: research