机构:[1]Department of Cardiothoracic Surgery, University of Pittsburgh School of Medicine, Pittsburgh, Pa[2]Department of Radiology, the Affiliated Zhongshan Hospital of Dalian University, Dalian, China[3]IIISLab LLC, Pittsburgh, Pa[4]Department of Radiology, the Fourth Hospital of Hebei Medical University, Hebei, China医技科室放射科河北医科大学第四医院[5]Departments of Radiology,University of Pittsburgh, Pittsburgh, Pa[6]Bioengineering, University of Pittsburgh, Pittsburgh, Pa[7]VA Pittsburgh Healthcare System, Pittsburgh, Pa.
The study objective was to investigate if machine learning algorithms can predict whether a lung nodule is benign, adenocarcinoma, or its preinvasive subtype from computed tomography images alone.
A dataset of chest computed tomography scans containing lung nodules was collected with their pathologic diagnosis from several sources. The dataset was split randomly into training (70%), internal validation (15%), and independent test sets (15%) at the patient level. Two machine learning algorithms were developed, trained, and validated. The first algorithm used the support vector machine model, and the second used deep learning technology: a convolutional neural network. Receiver operating characteristic analysis was used to evaluate the performance of the classification on the test dataset.
The support vector machine/convolutional neural network-based models classified nodules into 6 categories resulting in an area under the curve of 0.59/0.65 when differentiating atypical adenomatous hyperplasia versus adenocarcinoma in situ, 0.87/0.86 with minimally invasive adenocarcinoma versus invasive adenocarcinoma, 0.76/0.72 atypical adenomatous hyperplasia + adenocarcinoma in situ versus minimally invasive adenocarcinoma, 0.89/0.87 atypical adenomatous hyperplasia + adenocarcinoma in situ versus minimally invasive adenocarcinoma + invasive adenocarcinoma, and 0.93/0.92 atypical adenomatous hyperplasia + adenocarcinoma in situ + minimally invasive adenocarcinoma versus invasive adenocarcinoma. Classifying benign versus atypical adenomatous hyperplasia + adenocarcinoma in situ + minimally invasive adenocarcinoma versus invasive adenocarcinoma resulted in a micro-average area under the curve of 0.93/0.94 for the support vector machine/convolutional neural network models, respectively. The convolutional neural network-based methods had higher sensitivities than the support vector machine-based methods but lower specificities and accuracies.
The machine learning algorithms demonstrated reasonable performance in differentiating benign versus preinvasive versus invasive adenocarcinoma from computed tomography images alone. However, the prediction accuracy varies across its subtypes. This holds the potential for improved diagnostic capabilities with less-invasive means.
Published by Elsevier Inc.
第一作者机构:[1]Department of Cardiothoracic Surgery, University of Pittsburgh School of Medicine, Pittsburgh, Pa
通讯作者:
通讯机构:[1]Department of Cardiothoracic Surgery, University of Pittsburgh School of Medicine, Pittsburgh, Pa[7]VA Pittsburgh Healthcare System, Pittsburgh, Pa.[*1]Division of Thoracic and Foregut Surgery, Department of Cardiothoracic Surgery, Shadyside Medical Building, Suite 715, 5200 Centre Ave, Pittsburgh, PA 15232
推荐引用方式(GB/T 7714):
Ashraf Syed Faaz,Yin Ke,Meng Cindy X,et al.Predicting benign, preinvasive, and invasive lung nodules on computed tomography scans using machine learning.[J].JOURNAL OF THORACIC AND CARDIOVASCULAR SURGERY.2022,163(4):1496-+.doi:10.1016/j.jtcvs.2021.02.010.
APA:
Ashraf Syed Faaz,Yin Ke,Meng Cindy X,Wang Qi,Wang Qiong...&Dhupar Rajeev.(2022).Predicting benign, preinvasive, and invasive lung nodules on computed tomography scans using machine learning..JOURNAL OF THORACIC AND CARDIOVASCULAR SURGERY,163,(4)
MLA:
Ashraf Syed Faaz,et al."Predicting benign, preinvasive, and invasive lung nodules on computed tomography scans using machine learning.".JOURNAL OF THORACIC AND CARDIOVASCULAR SURGERY 163..4(2022):1496-+