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Please use this identifier to cite or link to this item: https://wslhd.intersearch.com.au/wslhdjspui/handle/1/9607
TitleApplying image features of proximal paracancerous tissues in predicting prognosis of patients with hepatocellular carcinoma
Authors: Lin, S.;Yong, J.;Zhang, L.;Chen, X.;Qiao, Liang;Pan, W.;Yang, Y.;Zhao, H.
WSLHD Author: Qiao, Liang
Subjects: Carcinoma, Hepatocellular;Liver Neoplasms;Hospitals;Tumor Microenvironment
Issue Date: 2024
Citation: Computers in Biology & Medicine 173:108365, 2024
Abstract: BACKGROUND: Most of the methods using digital pathological image for predicting Hepatocellular carcinoma (HCC) prognosis have not considered paracancerous tissue microenvironment (PTME), which are potentially important for tumour initiation and metastasis. This study aimed to identify roles of image features of PTME in predicting prognosis and tumour recurrence of HCC patients. METHODS: We collected whole slide images (WSIs) of 146 HCC patients from Sun Yat-sen Memorial Hospital (SYSM dataset). For each WSI, five types of regions of interests (ROIs) in PTME and tumours were manually annotated. These ROIs were used to construct a Lasso Cox survival model for predicting the prognosis of HCC patients. To make the model broadly useful, we established a deep learning method to automatically segment WSIs, and further used it to construct a prognosis prediction model. This model was tested by the samples of 225 HCC patients from the Cancer Genome Atlas Liver Hepatocellular Carcinoma (TCGA-LIHC). RESULTS: In predicting prognosis of the HCC patients, using the image features of manually annotated ROIs in PTME achieved C-index 0.668 in the SYSM testing dataset, which is higher than the C-index 0.648 reached by the model only using image features of tumours. Integrating ROIs of PTME and tumours achieved C-index 0.693 in the SYSM testing dataset. The model using automatically segmented ROIs of PTME and tumours achieved C-index of 0.665 (95% CI: 0.556-0.774) in the TCGA-LIHC samples, which is better than the widely used methods, WSISA (0.567), DeepGraphSurv (0.593), and SeTranSurv (0.642). Finally, we found the Texture SumAverage Skew HV on immune cell infiltration and Texture related features on desmoplastic reaction are the most important features of PTME in predicting HCC prognosis. We additionally used the model in prediction HCC recurrence for patients from SYSM-training, SYSM-testing, and TCGA-LIHC datasets, indicating the important roles of PTME in the prediction. CONCLUSIONS: Our results indicate image features of PTME is critical for improving the prognosis prediction of HCC. Moreover, the image features related with immune cell infiltration and desmoplastic reaction of PTME are the most important factors associated with prognosis of HCC.
URI: https://wslhd.intersearch.com.au/wslhdjspui/handle/1/9607
DOI: https://dx.doi.org/10.1016/j.compbiomed.2024.108365
Journal: Computers in Biology & Medicine
Type: Journal Article
Department: Storr Liver Centre
Facility: Westmead
Appears in Collections:Westmead Hospital 2019 - 2024

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