Prediction of radiation induced liver disease using artificial neural networks

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Abstract

Objective: To evaluate the efficiency of predicting radiation induced liver disease (RILD) with an artificial neural network (ANN) model. Methods and Materials: From August 2000 to November 2004, a total of 93 primary liver carcinoma (PLC) patients with single lesion and associated with hepatic cirrhosis of Child-Pugh grade A, were treated with hypofractionated three-dimensional conformal radiotherapy (3DCRT). Eight out of 93 patients were diagnosed RILD. Ninety-three patients were randomly divided into two subsets (training set and verification set). In model A, the ratio of patient numbers was 1:1 for training and verification set, and in model B, the ratio was 2:1. Results: The areasunder receiver-operating characteristic (ROC) curves were 0.8897 and 0.8831 for model A and B, respectively. Sensitivity, specificity, accuracy, positive prediction value (PPV) and negative prediction value (NPV) were 0.875 (7/8), 0.882 (75/85), 0.882 (82/93), 0.412 (7/17) and 0.987 (75/76) for model A, and 0.750 (6/8), 0.800 (68/ 85), 0.796 (74/93), 0.261 (6/23) and 0.971 (68/70) for model B. Conclusion: ANN was proved high accuracy for prediction of RILD. It could be used together with other models and dosimetric parameters to evaluate hepatic irradiation plans. © 2006 Foundation for Promotion of Cancer Research.

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Zhu, J., Zhu, X. D., Liang, S. X., Xu, Z. Y., Zhao, J. D., Huang, Q. F., … Jiang, G. L. (2006). Prediction of radiation induced liver disease using artificial neural networks. Japanese Journal of Clinical Oncology, 36(12), 783–788. https://doi.org/10.1093/jjco/hyl117

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