Automatic Diagnosis of Pectus Excavatum from CT Images Using a Joint CNN-LSTM Model

2023 9th International Conference on Control, Decision and Information Technologies (CoDIT)(2023)

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摘要
Pectus excavatum (PE) is one of the most common congenital sternal deformities. Accurate preoperative diagnosis of PE is of great significance for subsequent correction and improvement of the patient's quality of life. However, current diagnostic methods rely on the calculation of some PE indices, which is a heavy workload for physical therapists and suffers from measurement errors. To address this issue, we propose an end-to-end automatic assessment of PE, which features a cascaded structure of CNN and LSTM. Specifically, the high-level feature representations of CT images are extracted by the pretrained CNN and then processed through the LSTM layers for classification. In addition, we build up a medical image dataset for PE diagnosis by collecting chest CT images of 42 subjects. Results on this dataset show that the proposed CNN-LSTM framework achieves a relatively high accuracy of 90.20%, which provides a new perspective for the automatic diagnosis of PE in clinics.
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关键词
accurate preoperative diagnosis,automatic diagnosis,chest CT images,CNN-LSTM framework,common congenital sternal deformities,current diagnostic methods,end-to-end automatic assessment,heavy workload,high-level feature representations,joint CNN-LSTM model,LSTM layers,medical image dataset,patient,PE diagnosis,PE indices,pectus excavatum,physical therapists,pretrained CNN,subsequent correction,suffers
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