Szczegóły publikacji

Opis bibliograficzny

Acral melanocytic lesion segmentation with a convolution neural network (U-Net) / Joanna JAWOREK-KORJAKOWSKA // W: Medical imaging 2019 [Dokument elektroniczny] : computer-aided diagnosis : 16–21 February 2019, San Diego, United States / eds. Kensaku Mori, Horst K. Hahn. — Wersja do Windows. — Dane tekstowe. — [Bellingham] : SPIE, cop. 2019. — (Proceedings of SPIE / The International Society for Optical Engineering ; ISSN 0277-786X ; vol. 10950). — ISBN na podstawie bazy Web of Science. — ISBN: 978-1-5106-2548-8. — S. 109504B-1–109504B-7. — Wymagania systemowe: Adobe Reader. — Bibliogr. s. 109504B-6–109504B-7, Abstr.

Autor

Słowa kluczowe

deep learningskin cancersegmentationacral melanomaU-Net architecture

Dane bibliometryczne

ID BaDAP120829
Data dodania do BaDAP2019-04-10
Tekst źródłowyURL
DOI10.1117/12.2512804
Rok publikacji2019
Typ publikacjimateriały konferencyjne (aut.)
Otwarty dostęptak
WydawcaSPIE - The International Society for Optics and Photonics
KonferencjaMedical imaging 2019 : computer-aided diagnosis
Czasopismo/seriaProceedings of SPIE / The International Society for Optical Engineering

Abstract

Melanocytic lesions of acral sites (ALM) are common, with an estimated prevalence of 28 - 36% in the USA. While the majority of these lesions are benign, differentiation from acral melanoma (AM) is often challenging. Much research has been done in segmenting and classifying skin moles located in acral volar areas. However, methods published to date cannot be easily extended to new skin regions because of different appearance and properties. In this paper, we propose a deep learning (U-Net) architecture to segment acral melonacytic lesions which is a necessary initial step for skin lesion pattern recognition, furthermore it is a prerequisite step to provide an accurate classification and diagnosis. The U-Net is one of the most promising deep learning solution for image segmentation and is built upon fully convolutional network. On the independent validation dataset including 210 dermoscopy images our implemented method showed high segmentation accuracy. For the U-Net convolutional neural network, an average DSC of 0.92, accuracy 0.94, sensitivity 0.91, and specificity 0.92 has been achieved. ALM due to small size and similarity to other local structures create enormous difficulties during the segmentation and assessment process. The use of advanced segmentation methods like deep learning models especially convolutional neural networks have the potential to improve the accuracy of advanced medical area segmentation.

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#120577Data dodania: 11.3.2019
Acral melanocytic lesion segmentation with a convolution neural network (U-Net) : [poster 10950-153] / Joanna JAWOREK-KORJAKOWSKA // W: Computer-Aided Diagnosis [Dokument elektroniczny] : conference 10950 : 16 - 21 February 2019, San Diego, USA. — Wersja do Windows. — Dane tekstowe. — [San Diego : s. n.], [2019]. — Ekran 1. — Tryb dostępu: https://spie.org/MI/MySchedule [2019-03-08]. — Tekst dostępny po zalogowaniu
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The use of U-Net convolutional neural network in magnetic resonance images segmentation / Jan Przybyszewski, Piotr KOHUT // Applied Medical Informatics [Dokument elektroniczny]. - Czasopismo elektroniczne ; ISSN 2067-7855. — 2020 — vol. 42 no. 3, s. 180-188. — Wymagania systemowe: Adobe Reader. — Bibliogr. s. 187-188, Abstr. — Publikacja dostępna online od: 2020-09-30