CVAIApr 29, 2024

Research on Intelligent Aided Diagnosis System of Medical Image Based on Computer Deep Learning

arXiv:2404.18419v115 citationsh-index: 52024 IEEE 2nd International Conference on Image Processing and Computer Applications (ICIPCA)
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for clinical diagnosis, enabling outpatient doctors to upload images for more accurate tumor localization and treatment guidance.

The paper tackled medical image diagnosis by proposing a dual-mode medical image assisted diagnosis method based on deep learning, achieving an AUROC of 0.9985, recall of 0.9814, and accuracy of 0.9833.

This paper combines Struts and Hibernate two architectures together, using DAO (Data Access Object) to store and access data. Then a set of dual-mode humidity medical image library suitable for deep network is established, and a dual-mode medical image assisted diagnosis method based on the image is proposed. Through the test of various feature extraction methods, the optimal operating characteristic under curve product (AUROC) is 0.9985, the recall rate is 0.9814, and the accuracy is 0.9833. This method can be applied to clinical diagnosis, and it is a practical method. Any outpatient doctor can register quickly through the system, or log in to the platform to upload the image to obtain more accurate images. Through the system, each outpatient physician can quickly register or log in to the platform for image uploading, thus obtaining more accurate images. The segmentation of images can guide doctors in clinical departments. Then the image is analyzed to determine the location and nature of the tumor, so as to make targeted treatment.

Foundations

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