Unknown

Dataset Information

0

Radiation Dose Reduction in Digital Mammography by Deep-Learning Algorithm Image Reconstruction: A Preliminary Study 딥러닝 알고리즘을 이용한 저선량 디지털 유방 촬영 영상의 복원: 예비 연구


ABSTRACT:

Purpose

To develop a denoising convolutional neural network-based image processing technique and investigate its efficacy in diagnosing breast cancer using low-dose mammography imaging.

Materials and Methods

A total of 6 breast radiologists were included in this prospective study. All radiologists independently evaluated low-dose images for lesion detection and rated them for diagnostic quality using a qualitative scale. After application of the denoising network, the same radiologists evaluated lesion detectability and image quality. For clinical application, a consensus on lesion type and localization on preoperative mammographic examinations of breast cancer patients was reached after discussion. Thereafter, coded low-dose, reconstructed full-dose, and full-dose images were presented and assessed in a random order.

Results

Lesions on 40% reconstructed full-dose images were better perceived when compared with low-dose images of mastectomy specimens as a reference. In clinical application, as compared to 40% reconstructed images, higher values were given on full-dose images for resolution (p < 0.001); diagnostic quality for calcifications (p < 0.001); and for masses, asymmetry, or architectural distortion (p = 0.037). The 40% reconstructed images showed comparable values to 100% full-dose images for overall quality (p = 0.547), lesion visibility (p = 0.120), and contrast (p = 0.083), without significant differences.

Conclusion

Effective denoising and image reconstruction processing techniques can enable breast cancer diagnosis with substantial radiation dose reduction.

SUBMITTER:  

PROVIDER: S-EPMC9514435 | biostudies-literature | 2021 Dec

REPOSITORIES: biostudies-literature

Similar Datasets

| S-EPMC8921160 | biostudies-literature
| S-EPMC7034827 | biostudies-literature
| S-EPMC10006148 | biostudies-literature
| S-EPMC10957592 | biostudies-literature
| S-EPMC10494344 | biostudies-literature
| S-EPMC8364308 | biostudies-literature
| S-EPMC9544990 | biostudies-literature
| S-EPMC5702911 | biostudies-literature
| S-EPMC8980706 | biostudies-literature
| S-EPMC10167467 | biostudies-literature