Automated segmentation of dermal fillers in OCT images of mice using convolutional neural networks.

Biomedical optics express 2019 Vol.10(3) p. 1315-1328

Pfister M, Schützenberger K, Pfeiffenberger U, Messner A, Chen Z, Dos Santos VA, Puchner S, Garhöfer G, Schmetterer L, Gröschl M, Werkmeister RM

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Abstract

We present a system for automatic determination of the intradermal volume of hydrogels based on optical coherence tomography (OCT) and deep learning. Volumetric image data was acquired using a custom-built OCT prototype that employs an akinetic swept laser at ~1310 nm with a bandwidth of 87 nm, providing an axial resolution of ~6.5 μm in tissue. Three-dimensional data sets of a 10 mm × 10 mm skin patch comprising the intradermal filler and the surrounding tissue were acquired. A convolutional neural network using a u-net-like architecture was trained from slices of 100 OCT volume data sets where the dermal filler volume was manually annotated. Using six-fold cross-validation, a mean accuracy of 0.9938 and a Jaccard similarity coefficient of 0.879 were achieved.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
시술 filler 필러 주입술 dict 1
시술 dermal filler 필러 주입술 dict 1

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