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1.
J Ultrason ; 22(89): 70-75, 2022 Apr.
Article in English | MEDLINE | ID: mdl-35811586

ABSTRACT

Aim of the study: Deep neural networks have achieved good performance in breast mass classification in ultrasound imaging. However, their usage in clinical practice is still limited due to the lack of explainability of decisions conducted by the networks. In this study, to address the explainability problem, we generated saliency maps indicating ultrasound image regions important for the network's classification decisions. Material and methods: Ultrasound images were collected from 272 breast masses, including 123 malignant and 149 benign. Transfer learning was applied to develop a deep network for breast mass classification. Next, the class activation mapping technique was used to generate saliency maps for each image. Breast mass images were divided into three regions: the breast mass region, the peritumoral region surrounding the breast mass, and the region below the breast mass. The pointing game metric was used to quantitatively assess the overlap between the saliency maps and the three selected US image regions. Results: Deep learning classifier achieved the area under the receiver operating characteristic curve, accuracy, sensitivity, and specificity of 0.887, 0.835, 0.801, and 0.868, respectively. In the case of the correctly classified test US images, analysis of the saliency maps revealed that the decisions of the network could be associated with the three selected regions in 71% of cases. Conclusions: Our study is an important step toward better understanding of deep learning models developed for breast mass diagnosis. We demonstrated that the decisions made by the network can be related to the appearance of certain tissue regions in breast mass US images.

2.
Article in Korean | WPRIM (Western Pacific) | ID: wpr-214872

ABSTRACT

PURPOSE: The purpose of this study was to determine the accuracy of ultrasound guided vacuum-assisted Mammotome biopsy (UVAMB) for breast lesions. METHODS: Percutaneous biopsies of 564 breast lesions, in 489 patients, using UVAMB were performed between October 2000 and May 2002. The pathological findings of the UVAMB were compared with excisional biopsies, sonographic follow-ups and clinical follow-up findings. We evaluated the complication on immediate post-biopsy and 1 week later using ultrasound. RESULTS: Of the 564 lesions, 108 (19.1%) were diagnosed as malignant by UVAMB, and of 456 benign lesions, 63 were excised. On excision two of the benign lesions were found to be carcinomas. The false negative rate of the UVAMB was 2.7%, and 99 (17.5%) of the 564 biopsies were revealed as hematomas by ultrasound 1 week later. However, almost all of complications were well controlled by conservative management. CONCLUSION: Ultrasound guided vacuum-assisted Mammotome biopsies reduced the possibility of false-negatives and underestimated the disease. The complications of UVAMB were not serious, was proved to be a good biopsy method for small, non-palpable breast lesions.


Subject(s)
Humans , Biopsy , Breast , Follow-Up Studies , Hematoma , Ultrasonography
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