Artificial-Intelligence-Assisted Detection of Metastatic Colorectal Cancer Cells in Ascitic Fluid.
Hyung Kyung KimEunkyung HanJeonghyo LeeKwangil YimJamshid Abdul-GhafarKyung-Jin SeoJang Won SeoGyungyub GongNam Hoon ChoMilim KimChong Woo YooYosep ChongPublished in: Cancers (2024)
Ascites cytology is a cost-effective test for metastatic colorectal cancer (CRC) in the abdominal cavity. However, metastatic carcinoma of the peritoneum is difficult to diagnose based on biopsy findings, and ascitic aspiration cytology has a low sensitivity and specificity and a high inter-observer variability. The aim of the present study was to apply artificial intelligence (AI) to classify benign and malignant cells in ascites cytology patch images of metastatic CRC using a deep convolutional neural network. Datasets were collected from The OPEN AI Dataset Project, a nationwide cytology dataset for AI research. The numbers of patch images used for training, validation, and testing were 56,560, 7068, and 6534, respectively. We evaluated 1041 patch images of benign and metastatic CRC in the ascitic fluid to compare the performance of pathologists and an AI algorithm, and to examine whether the diagnostic accuracy of pathologists improved with the assistance of AI. This AI method showed an accuracy, a sensitivity, and a specificity of 93.74%, 87.76%, and 99.75%, respectively, for the differential diagnosis of malignant and benign ascites. The diagnostic accuracy and sensitivity of the pathologist with the assistance of the proposed AI method increased from 86.8% to 90.5% and from 73.3% to 79.3%, respectively. The proposed deep learning method may assist pathologists with different levels of experience in diagnosing metastatic CRC cells of ascites.
Keyphrases
- artificial intelligence
- deep learning
- convolutional neural network
- big data
- machine learning
- fine needle aspiration
- metastatic colorectal cancer
- induced apoptosis
- small cell lung cancer
- ultrasound guided
- squamous cell carcinoma
- cell cycle arrest
- high grade
- cell free
- oxidative stress
- quantum dots
- cross sectional
- cell proliferation