2022
Fully Integrated Decision-Support System for Detection and Segmentation of Breast Lesions in Digital Mammogram
HRUBÝ, Robert; Daniel KVAK; Anna CHROMCOVÁ a Marek BIROŠZákladní údaje
Originální název
Fully Integrated Decision-Support System for Detection and Segmentation of Breast Lesions in Digital Mammogram
Název anglicky
Fully Integrated Decision-Support System for Detection and Segmentation of Breast Lesions in Digital Mammogram
Autoři
HRUBÝ, Robert; Daniel KVAK; Anna CHROMCOVÁ a Marek BIROŠ
Vydání
34. vyd. Praha, Medsoft 2022, od s. 28-32, 5 s. 2022
Nakladatel
Creative Connections, a.s.
Další údaje
Typ výsledku
Stať ve sborníku
Stát vydavatele
Česká republika
Utajení
není předmětem státního či obchodního tajemství
Forma vydání
tištěná verze "print"
Odkazy
Označené pro přenos do RIV
Ne
ISSN
Klíčová slova anglicky
Breast Cancer, Breast Lesion Detection, Computer-Aided Detection, Deep Learning, Image Segmentation, Mammogram, Picture Archiving and Communicating System.
Příznaky
Mezinárodní význam, Recenzováno
Změněno: 12. 12. 2023 11:00, Mgr. Daniel Kvak
Anotace
V originále
Breast cancer is one of the most prevalent forms of cancer affecting women. Detection of suspicious lesions on mammographic images is considered a challenging task due to the variability of lesion sizes and shapes, the problematic margins of the findings, and some extremely small lesions that are difficult to localize. With the increasing availability of digitized clinical archives and the development of complex deep learning (DL) methods, we are witnessing a trend towards the integration of robust computer-aided detection (CAD) systems to assist in the automatic segmentation of lesions on mammograms to aid in the diagnosis of breast cancer. This study presents deep learning–based automatic detection algorithm (DLAD), directly implemented in picture archiving and communication system (PACS) to aid in improving the radiologist's workflow. The proposed DLAD is evaluated on INbreast dataset with a sample size of n=138 (71 [51.45\%] BI-RADS 4/5/6 images, 67 [48.55\%] BI-RADS 1 images). Preliminary results show a sensitivity of 0.9296 [95\% CI 0.8701-0.9891], specificity of 0.7273 [0.6207-0.8339] and IoU of 0.5661, indicating a low false negative rate while maintaining a reasonable false positive rate.