Spectrally Tunable Neural Network-Assisted Segmentation of Microneurosurgical Anatomy.

Frontiers in neuroscience 2020 Vol.14() p. 640

Puustinen S, Alaoui S, Bartczak P, Bednarik R, Koivisto T, Dietz A, von Und Zu Fraunberg M, Iso-Mustajärvi M, Elomaa AP

Abstract

[BACKGROUND] Distinct tissue types are differentiated based on the surgeon's knowledge and subjective visible information, typically assisted with white-light intraoperative imaging systems. Narrow-band imaging (NBI) assists in tissue identification and enables automated classifiers, but many anatomical details moderate computational predictions and cause bias. In particular, tissues' light-source-dependent optical characteristics, anatomical location, and potentially hazardous microstructural changes such as peeling have been overlooked in previous literature.

[METHODS] Narrow-band images of five ( = 5) facial nerves (FNs) and internal carotid arteries (ICAs) were captured from freshly frozen temporal bones. The FNs were split into intracranial and intratemporal samples, and ICAs' adventitia was peeled from the distal end. Three-dimensional (3D) spectral data were captured by a custom-built liquid crystal tunable filter (LCTF) spectral imaging (SI) system. We investigated the normal variance between the samples and utilized descriptive and machine learning analysis on the image stack hypercubes.

[RESULTS] Reflectance between intact and peeled arteries in lower-wavelength domains between 400 and 576 nm was significantly different ( < 0.05). Proximal FN could be differentiated from distal FN in a higher range, 490-720 nm ( < 0.001). ICA with intact tunica differed from proximal FN nearly thorough the VIS range, 412-592 nm ( < 0.001) and 664-720 nm ( < 0.05) as did its distal counterpart, 422-720 nm ( < 0.001). The availed U-Net algorithm classified 90.93% of the pixels correctly in comparison to tissue margins delineated by a specialist.

[CONCLUSION] Selective NBI represents a promising method for assisting tissue identification and computational segmentation of surgical microanatomy. Further multidisciplinary research is required for its clinical applications and intraoperative integration.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
해부 tissue scispacy 1
해부 tissues scispacy 1
해부 tunica scispacy 1
합병증 intratemporal samples scispacy 1
약물 [BACKGROUND] scispacy 1
질환 ICAs → internal carotid arteries scispacy 1
질환 samples scispacy 1
기타 ICAs' adventitia scispacy 1
기타 arteries scispacy 1
기타 tissue margins scispacy 1