| Literature DB >> 32982116 |
Han Ma1, Zhong-Xin Liu2, Jing-Jing Zhang1, Feng-Tian Wu3, Cheng-Fu Xu1, Zhe Shen1, Chao-Hui Yu4, You-Ming Li1.
Abstract
BACKGROUND: Efforts should be made to develop a deep-learning diagnosis system to distinguish pancreatic cancer from benign tissue due to the high morbidity of pancreatic cancer. AIM: To identify pancreatic cancer in computed tomography (CT) images automatically by constructing a convolutional neural network (CNN) classifier.Entities:
Keywords: Computed tomography; Convolutional neural networks; Deep learning; Pancreatic cancer
Mesh:
Year: 2020 PMID: 32982116 PMCID: PMC7495037 DOI: 10.3748/wjg.v26.i34.5156
Source DB: PubMed Journal: World J Gastroenterol ISSN: 1007-9327 Impact factor: 5.742
Figure 1Examples of dataset.
Figure 2Architecture of our convolutional neural network model.
Formula 1Statistics of our datasets
| Sets | Plain Scan | 182 | 91 | 123 | 214 | 396 | 1182 | 416 | 496 | 912 | 2094 |
| Arterial phase | 179 | 91 | 129 | 220 | 399 | 1282 | 575 | 735 | 1310 | 2592 | |
| Venous phase | 178 | 93 | 129 | 222 | 400 | 1287 | 573 | 699 | 1272 | 2559 | |
| Total | 539 | 275 | 381 | 656 | 1195 | 3751 | 1564 | 1930 | 3494 | 7245 | |
“At tail” means at tail or body of pancreas, while “At head” means at head or neck of pancreas. CT: Computed tomography.
Characteristics of study participants
| Variables | With pancreatic cancer ( | Without cancer ( | ||
| Age (yr) | 63.8 (8.7) | 61.0 (12.3) | 3.39 | 0.66 |
| Gender (male/female) | 124/98 | 98/92 | 0.385 | 0.54 |
| Diagnosis method surgery/biopsy | 161/61 | - | - | - |
| Tumor location; head and neck/tail and body | 129/63 | - | - | - |
| Tumor size | 3.5 (2.7-4.3) | - | - | - |
| ≤ 2 | 29 | - | - | - |
| 2-4 | 134 | - | - | - |
| > 4 | 59 | - | - | - |
Data are expressed as the mean ± SD.
t value.
χ2 value.
“Biopsy” includes patients who underwent biopsy only, patients who underwent biopsy before surgery were calculated in “Surgery”, and tumor size was evaluated in greatest dimension.
Tumor size was mainly evaluated by the gross surgical specimen, for patient who only underwent biopsy, the tumor size was calculated by computed tomography image.
Performance of the binary classifiers
| Plain scan | Arterial phase | Venous phase | |||
| Accuracy | 0.954747 | 0.957580 | 0.951549 | 0.346 | 0.841 |
| Specificity | 0.982710 | 0.975695 | 0.978692 | 0.149 | 0.928 |
| Sensitivity | 0.915758 | 0.940808 | 0.922756 | 0.914 | 0.633 |
Diagnostic accuracy of the binary classifiers in plain scan: Convolutional neural network vs gastroenterologists and trainees
| CNN | Doctors | |||
| No. of doctors | 10 | 15 | 25 | |
| Accuracy | 0.954747 | 0.922 | 0.736 | 0.815 |
| Specificity | 0.982710 | 0.923 | 0.725 | 0.847 |
| Sensitivity | 0.915758 | 0.921 | 0.792 | 0.809 |
CNN: Convolutional neural network.
Figure 3Receiver operating characteristic curves and AUC values for the binary classification of the plain scan using the convolutional neural network model. Each trainee’s prediction is represented by a single green point. The blue point is the average prediction of them. Each gastroenterologist’s prediction is represented by a single brown point. The red point is the average prediction of them. ROC: Receiver operating characteristic.
Performance of the ternary classifiers
| Accuracy | 0.820568 | 0.790633 | 0.788076 | 1.074 | 0.585 |
| Specificity | 0.985721 | 0.984770 | 0.990305 | 0.577 | 0.749 |
| Sensitivity (cancer at the tail/body of pancreas) | 0.520122 | 0.411098 | 0.360272 | 1.841 | 0.398 |
| Sensitivity (cancer at the head/neck of pancreas) | 0.462148 | 0.852390 | 0.728743 | 16.651 | < 0.001 |