Background The COVID-19 disease is putting unprecedented pressure on the global healthcare system. The CT (computed tomography) examination as a auxiliary confirmed diagnostic method can help clinicians quickly detect lesions locations of COVID-19 once screening by PCR test. Furthermore, the lesion subtypes classification plays a critical role in the consequent treatment decision. Identifying the subtypes of lesions accurately can help doctors discover changes in lesions in time and better assess the severity of COVID-19. Method The most four typical lesion subtypes of COVID-19 are discussed in this paper, which are GGO (ground-glass opacity), cord, solid and subsolid. A computer-aided diagnosis approach of lesion subtype is proposed in this paper. The radiomics data of lesions are segmented from COVID-19 patients CT images with diagnosis and lesions annotations by radiologists. Then the three-dimensional texture descriptors are applied on the volume data of lesions as well as shape and first-order features. The massive feature data are selected by HAFS (hybrid adaptive feature selection) algorithm and a classification model is trained at the same time. The classifier is used to predict lesion subtypes as side decision information for radiologists. Results There are 3734 lesions extracted from the dataset with 319 patients collection and then 189 radiomics features are obtained finally. The random forest classifier is trained with data augmentation that the number of different subtypes of lesions is imbalanced in initial dataset. The experimental results show that the accuracy of the four subtypes of lesions is (93.06%, 96.84%, 99.58%, and 94.30%), the recall is (95.52%, 91.58%, 95.80% and 80.75%) and the f -score is (93.84%, 92.37%, 95.47%, and 84.42%). Conclusion The three-dimensional radiomics features used in this paper can better express the high-level information of COVID-19 lesions in CT slices. HAFS method aggregates the results of multiple feature selection algorithms intersects with traditional methods to filter out redundant features more accurately. After selection, the subtype of COVID-19 lesion can be judged by inputting the features into the RF (random forest) model, which can help clinicians more accurately identify the subtypes of COVID-19 lesions and provide help for further research.
【저자키워드】 COVID-19, Radiomics, Lesion subtypes, 3D texture feature, Random forest, Hybrid adaptive feature selection, 【초록키워드】 Treatment, adaptive, Diagnosis, classification, COVID-19 disease, Computed tomography, ground-glass opacity, Features, Accuracy, severity of COVID-19, Algorithm, Research, Patient, Random forest, dataset, GGO, recall, PCR test, information, Critical, predict, Diagnostic method, COVID-19 patient, (Computed Tomography, lesion, Volume, Radiologists, Subtypes, Classifier, (Random Forest, clinician, traditional methods, lesions, help, shape, annotation, Express, experimental results, random, CORD, aggregate, global healthcare, subtype, identifying, approach, feature, initial, Result, selected, identify, detect, applied, changes in, auxiliary, traditional method, 【제목키워드】 pulmonary,