Analysis
Mask-RCNN detection of COVID-19 pneumonia symptoms by employing Stacked Autoencoders in deep unsupervised learning on Low-Dose High Resolution CT
- Citation Author(s):
- Submitted by:
- Zhihao Chen
- Last updated:
- Sun, 05/03/2020 - 02:15
- DOI:
- 10.21227/evmt-p369
- License:
- Creative Commons Attribution
Abstract
This paper applies AI (artificial intelligence) technology to analyze low-dose HRCT (High-resolution chest radiography) data in an attempt to detect COVID-19 pneumonia symptoms. A new model structure is proposed with segmentation of anatomical structures on DNNs-based (deep learning neural network) methods, relying on an abundance of labeled data for proper training. The model improves the existing techniques used for low-dose HRCT image inspection through an application of Stacked Autoencoders (SAEs) structures using the segmentation function for the area object detection model on Mask-RCNN. As a result, the proposed approach can quickly analyze X-ray images in detecting abnormalities in patients with lab-confirmed coronavirus even before clinical symptoms appear. In addition to detecting early abnormalities, area object detection model reveals a finding not seen in the latest cases of COVID-19. Most noteworthy, the study has shown that all COVID-19 patients exhibit an associated bilateral pleural effusion. The features are augmented to the model for the improvement of detection quality improvement and the shorten of the examination period.
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Dataset and analysis tools.docx | 14.74 KB |
Data Files
- 256*256 pixel html aetrain256.zip (833.41 kB)
- 128*128 pixel html aetrain128.zip (682.39 kB)
- 512*512 pixel html aetrain 512.zip (667.11 kB)
Original Dataset(s):
Analysis Document
Attachment Size
Dataset and analysis tools.docx 14.74 KB
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Dataset and analysis tools.docx | 14.74 KB |