A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules

Background. The differential diagnosis of subcentimetre lung nodules with a diameter of less than 1 cm has always been one of the problems of imaging doctors and thoracic surgeons. We plan to create a deep learning model for the diagnosis of pulmonary nodules in a simple method. Methods. Image data...

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Main Authors: Zhehao He, Wang Lv, Jian Hu
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Computational and Mathematical Methods in Medicine
Online Access:http://dx.doi.org/10.1155/2020/2812874
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spelling doaj-bd9bc921e4af4f00a62796d35ad4d6152020-11-25T03:10:12ZengHindawi LimitedComputational and Mathematical Methods in Medicine1748-670X1748-67182020-01-01202010.1155/2020/28128742812874A Simple Method to Train the AI Diagnosis Model of Pulmonary NodulesZhehao He0Wang Lv1Jian Hu2Department of Thoracic Surgery, The First Affiliated Hospital, College of Medicine, Zhejiang University, ChinaDepartment of Thoracic Surgery, The First Affiliated Hospital, College of Medicine, Zhejiang University, ChinaDepartment of Thoracic Surgery, The First Affiliated Hospital, College of Medicine, Zhejiang University, ChinaBackground. The differential diagnosis of subcentimetre lung nodules with a diameter of less than 1 cm has always been one of the problems of imaging doctors and thoracic surgeons. We plan to create a deep learning model for the diagnosis of pulmonary nodules in a simple method. Methods. Image data and pathological diagnosis of patients come from the First Affiliated Hospital of Zhejiang University School of Medicine from October 1, 2016, to October 1, 2019. After data preprocessing and data augmentation, the training set is used to train the model. The test set is used to evaluate the trained model. At the same time, the clinician will also diagnose the test set. Results. A total of 2,295 images of 496 lung nodules and their corresponding pathological diagnosis were selected as a training set and test set. After data augmentation, the number of training set images reached 12,510 images, including 6,648 malignant nodular images and 5,862 benign nodular images. The area under the P-R curve of the trained model is 0.836 in the classification of malignant and benign nodules. The area under the ROC curve of the trained model is 0.896 (95% CI: 78.96%~100.18%), which is higher than that of three doctors. However, the P value is not less than 0.05. Conclusion. With the help of an automatic machine learning system, clinicians can create a deep learning pulmonary nodule pathology classification model without the help of deep learning experts. The diagnostic efficiency of this model is not inferior to that of the clinician.http://dx.doi.org/10.1155/2020/2812874
collection DOAJ
language English
format Article
sources DOAJ
author Zhehao He
Wang Lv
Jian Hu
spellingShingle Zhehao He
Wang Lv
Jian Hu
A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules
Computational and Mathematical Methods in Medicine
author_facet Zhehao He
Wang Lv
Jian Hu
author_sort Zhehao He
title A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules
title_short A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules
title_full A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules
title_fullStr A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules
title_full_unstemmed A Simple Method to Train the AI Diagnosis Model of Pulmonary Nodules
title_sort simple method to train the ai diagnosis model of pulmonary nodules
publisher Hindawi Limited
series Computational and Mathematical Methods in Medicine
issn 1748-670X
1748-6718
publishDate 2020-01-01
description Background. The differential diagnosis of subcentimetre lung nodules with a diameter of less than 1 cm has always been one of the problems of imaging doctors and thoracic surgeons. We plan to create a deep learning model for the diagnosis of pulmonary nodules in a simple method. Methods. Image data and pathological diagnosis of patients come from the First Affiliated Hospital of Zhejiang University School of Medicine from October 1, 2016, to October 1, 2019. After data preprocessing and data augmentation, the training set is used to train the model. The test set is used to evaluate the trained model. At the same time, the clinician will also diagnose the test set. Results. A total of 2,295 images of 496 lung nodules and their corresponding pathological diagnosis were selected as a training set and test set. After data augmentation, the number of training set images reached 12,510 images, including 6,648 malignant nodular images and 5,862 benign nodular images. The area under the P-R curve of the trained model is 0.836 in the classification of malignant and benign nodules. The area under the ROC curve of the trained model is 0.896 (95% CI: 78.96%~100.18%), which is higher than that of three doctors. However, the P value is not less than 0.05. Conclusion. With the help of an automatic machine learning system, clinicians can create a deep learning pulmonary nodule pathology classification model without the help of deep learning experts. The diagnostic efficiency of this model is not inferior to that of the clinician.
url http://dx.doi.org/10.1155/2020/2812874
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