| Literature DB >> 34636931 |
Rong Yang1, Yizhou Chen2, Guo Sa1, Kangjie Li2, Haigen Hu2, Jie Zhou3, Qiu Guan4, Feng Chen5.
Abstract
BACKGROUND: At present, numerous challenges exist in the diagnosis of pancreatic SCNs and MCNs. After the emergence of artificial intelligence (AI), many radiomics research methods have been applied to the identification of pancreatic SCNs and MCNs.Entities:
Keywords: Computed tomography; Deep neural network; MCNs; Pancreas; SCNs
Mesh:
Year: 2021 PMID: 34636931 PMCID: PMC8776667 DOI: 10.1007/s00261-021-03230-5
Source DB: PubMed Journal: Abdom Radiol (NY)
Fig. 1MMRF-ResNet classifier flow chart. Step 1: Image segmentation. Step 2: Feature extraction. Step 3: Classification. WW: Window width, WL: Window level, Canny: An efficient edge detection algorithm, Gradient magnitude: Magnitude of pixel gradient in the image. Gradient is a vector with direction and size, DNN: Deep Neural Network, Residual block and pool 5: Network structure in convolutional neural networks, Softmax, Bayes, KNN, Random forest: a type of classifier
Fig. 2Classification model of pancreatic SCNs and MCNs based on single-channel and multichannel images. WW: Window Width, WL: Window Level, Canny: An efficient edge detection algorithm, Gradient magnitude: Magnitude of pixel gradient in the image. The gradient is a vector with direction and size. Softmax: a type of classifier
Fig. 3Single-channel manually outlined ROI and multichannel images. A and C ROI images of a 45-year-old woman with SCN. A Single-channel manually outlined ROI image. The lesion is manually outlined (the area within the red curve outline) inaccurately, causing erroneous information to be incorporated into the area of interest (the green arrow shows that part of the normal structure is included in the ROI). C Multichannel ROI image (area within the blue circle) of the same patient does not include the normal tissue area. B and D ROI images of a 56-year-old woman with MCN. B A single-channel manually outlined ROI image (the area within the red curve outline) shows that part of the normal structure is included (the green arrow). D Multichannel ROI image (area within the blue circle) of the same patient is more accurate than the single-channel manually outlined ROI image
Comparison of the results of classification of pancreatic SCNs and MCNs using Manual-ResNet and Multichannel-ResNet
| Segmentation method of CT lesion image | Precision | Sensitivity | Specificity | Accuracy | F1 score | AUC | |
|---|---|---|---|---|---|---|---|
| Manual | 83.03% | 86.69% | 81.64% | 84.17% | 84.78% | 0.91 | < 0.001 |
| Multichannel | 92.58% | 92.58% | 92.31% | 92.45% | 92.58% | 0.98 | – |
Manual: Manual outline of the lesion used to segment the lesion image, Multichannel: Semiautomatic segmentation of the lesion image using human–computer interaction for the manual image, ResNet: a type of DNN. ResNet extracts image features in the region of interest and then uses the Softmax classifier in the classification network to classify the lesions
Comparison of classification results of pancreatic SCNs and MCNs by commonly used and DNN image feature extraction methods
| Classification | Precision | Sensitivity | Specificity | Accuracy | F1 score | AUC | |
|---|---|---|---|---|---|---|---|
| AlexNet | 87.89% | 92.11% | 86.85% | 89.52% | 89.05% | 0.94 | < 0.001 |
| ResNet | 92.58% | 92.58% | 92.31% | 92.45% | 92.58% | 0.97 | < 0.001 |
| ResNet_SVM | 93.17% | 91.39% | 93.05% | 92.20% | 92.27% | 0.98 | < 0.001 |
| ResNet_KNN | 97.26% | 84.93% | 97.52% | 91.11% | 90.68% | 0.96 | < 0.001 |
| ResNet_Bayes | 90.67% | 91.63% | 93.80% | 92.69% | 92.74% | 0.94 | < 0.001 |
| 84.67% | 80.62% | 84.86% | 82.70% | 82.60% | 0.91 | < 0.001 | |
| 93.46% | 68.42% | 95.04% | 81.49% | 79.01% | 0.92 | < 0.001 | |
| 68.85% | 52.87% | 75.19% | 63.82% | 59.81% | 0.73 | < 0.001 | |
| lbp_SVM | 75.06% | 73.44% | 74.69% | 74.06% | 74.24% | 0.80 | < 0.001 |
| lbp_KNN | 78.02% | 77.27% | 77.42% | 77.34% | 77.64% | 0.85 | < 0.001 |
| lbp_Bayes | 56.60% | 78.95% | 37.22% | 58.47% | 65.93% | 0.60 | < 0.001 |
| hog_SVM | 83.25% | 80.86% | 83.13% | 81.97% | 82.04% | 0.90 | < 0.001 |
| hog_KNN | 86.02% | 48.56% | 91.81% | 69.79% | 62.08% | 0.82 | < 0.001 |
| hog_Bayes | 76.49% | 55.26% | 82.38% | 68.57% | 64.17% | 0.75 | < 0.001 |
| glcm_SVM | 47.06% | 44.02% | 48.64% | 46.29% | 45.49% | 0.47 | < 0.001 |
| glcm_KNN | 56.12% | 55.98% | 54.59% | 55.30% | 56.05% | 0.58 | < 0.001 |
| glcm_Bayes | 55.89% | 93.06% | 23.83% | 59.07% | 69.84% | 0.64 | < 0.001 |
| gabor_SVM | 66.75% | 63.40% | 67.25% | 65.29% | 65.03% | 0.70 | < 0.001 |
| gabor_KNN | 61.55% | 72.01% | 53.35% | 62.85% | 66.37% | 0.65 | < 0.001 |
| gabor_Bayes | 58.93% | 71.05% | 48.64% | 60.05% | 64.43% | 0.60 | < 0.001 |
ResNet and AlexNet: two types of classification methods based on deep neural networks used to extract image features of lesions and classify pancreatic lesions, Wavelet, LBP, HOG, GLCM, and Gabor: currently commonly used radiomics methods used for image extraction, SVM, KNN, and Bayes: classifiers used to classify lesions
Comparison of classification results of pancreatic SCNs and MCNs based on multiple classifiers
| Classification | Precision | Sensitivity | Specificity | Accuracy | F1 score | AUC | |
|---|---|---|---|---|---|---|---|
| ResNet_Softmax | 92.58% | 92.58% | 92.31% | 92.45% | 92.58% | 0.97 | < 0.001 |
| ResNet_KNN | 97.26% | 84.93% | 97.52% | 91.11% | 90.68% | 0.96 | < 0.001 |
| ResNet_Bayes | 90.67% | 92.00% | 90.46% | 91.23% | 91.33% | 0.94 | < 0.001 |
| Majority voting | 89.98% | 93.09% | 89.90% | 91.47% | 91.50% | 0.96 | < 0.001 |
| MMRF-ResNet | 93.87% | 91.63% | 93.80% | 92.69% | 92.74% | 0.96 |
ResNet: a type of DNN method for extracting image features, Softmax, KNN, Bayes: classifiers, Majority voting: a type of multiple classifier that produces results consistent with the classification results of most classifiers, Random forest classifier: a type of multiple classifier that produces results consistent with the classification results of a higher-weight classifiers during the analysis of training data