Cargando…

Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm

The blood–brain barrier (BBB) is a selective barrier that controls the transport between the blood and neural tissue features and maintains brain homeostasis to protect the central nervous system (CNS). In vitro models can be useful to understand the role of the BBB in disease and assess the effects...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Huiting, Kang, Dong-Hee, Piantino, Marie, Tominaga, Daisuke, Fujimura, Takashi, Nakatani, Noriyuki, Taylor, J. Nicholas, Furihata, Tomomi, Matsusaki, Michiya, Fujita, Satoshi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10452445/
https://www.ncbi.nlm.nih.gov/pubmed/37622905
http://dx.doi.org/10.3390/bios13080818
_version_ 1785095673014648832
author Zhang, Huiting
Kang, Dong-Hee
Piantino, Marie
Tominaga, Daisuke
Fujimura, Takashi
Nakatani, Noriyuki
Taylor, J. Nicholas
Furihata, Tomomi
Matsusaki, Michiya
Fujita, Satoshi
author_facet Zhang, Huiting
Kang, Dong-Hee
Piantino, Marie
Tominaga, Daisuke
Fujimura, Takashi
Nakatani, Noriyuki
Taylor, J. Nicholas
Furihata, Tomomi
Matsusaki, Michiya
Fujita, Satoshi
author_sort Zhang, Huiting
collection PubMed
description The blood–brain barrier (BBB) is a selective barrier that controls the transport between the blood and neural tissue features and maintains brain homeostasis to protect the central nervous system (CNS). In vitro models can be useful to understand the role of the BBB in disease and assess the effects of drug delivery. Recently, we reported a 3D BBB model with perfusable microvasculature in a Transwell insert. It replicates several key features of the native BBB, as it showed size-selective permeability of different molecular weights of dextran, activity of the P-glycoprotein efflux pump, and functionality of receptor-mediated transcytosis (RMT), which is the most investigated pathway for the transportation of macromolecules through endothelial cells of the BBB. For quality control and permeability evaluation in commercial use, visualization and quantification of the 3D vascular lumen structures is absolutely crucial. Here, for the first time, we report a rapid, non-invasive optical coherence tomography (OCT)-based approach to quantify the microvessel network in the 3D in vitro BBB model. Briefly, we successfully obtained the 3D OCT images of the BBB model and further processed the images using three strategies: morphological imaging processing (MIP), random forest machine learning using the Trainable Weka Segmentation plugin (RF-TWS), and deep learning using pix2pix cGAN. The performance of these methods was evaluated by comparing their output images with manually selected ground truth images. It suggested that deep learning performed well on object identification of OCT images and its computation results of vessel counts and surface areas were close to the ground truth results. This study not only facilitates the permeability evaluation of the BBB model but also offers a rapid, non-invasive observational and quantitative approach for the increasing number of other 3D in vitro models.
format Online
Article
Text
id pubmed-10452445
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-104524452023-08-26 Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm Zhang, Huiting Kang, Dong-Hee Piantino, Marie Tominaga, Daisuke Fujimura, Takashi Nakatani, Noriyuki Taylor, J. Nicholas Furihata, Tomomi Matsusaki, Michiya Fujita, Satoshi Biosensors (Basel) Article The blood–brain barrier (BBB) is a selective barrier that controls the transport between the blood and neural tissue features and maintains brain homeostasis to protect the central nervous system (CNS). In vitro models can be useful to understand the role of the BBB in disease and assess the effects of drug delivery. Recently, we reported a 3D BBB model with perfusable microvasculature in a Transwell insert. It replicates several key features of the native BBB, as it showed size-selective permeability of different molecular weights of dextran, activity of the P-glycoprotein efflux pump, and functionality of receptor-mediated transcytosis (RMT), which is the most investigated pathway for the transportation of macromolecules through endothelial cells of the BBB. For quality control and permeability evaluation in commercial use, visualization and quantification of the 3D vascular lumen structures is absolutely crucial. Here, for the first time, we report a rapid, non-invasive optical coherence tomography (OCT)-based approach to quantify the microvessel network in the 3D in vitro BBB model. Briefly, we successfully obtained the 3D OCT images of the BBB model and further processed the images using three strategies: morphological imaging processing (MIP), random forest machine learning using the Trainable Weka Segmentation plugin (RF-TWS), and deep learning using pix2pix cGAN. The performance of these methods was evaluated by comparing their output images with manually selected ground truth images. It suggested that deep learning performed well on object identification of OCT images and its computation results of vessel counts and surface areas were close to the ground truth results. This study not only facilitates the permeability evaluation of the BBB model but also offers a rapid, non-invasive observational and quantitative approach for the increasing number of other 3D in vitro models. MDPI 2023-08-15 /pmc/articles/PMC10452445/ /pubmed/37622905 http://dx.doi.org/10.3390/bios13080818 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zhang, Huiting
Kang, Dong-Hee
Piantino, Marie
Tominaga, Daisuke
Fujimura, Takashi
Nakatani, Noriyuki
Taylor, J. Nicholas
Furihata, Tomomi
Matsusaki, Michiya
Fujita, Satoshi
Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm
title Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm
title_full Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm
title_fullStr Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm
title_full_unstemmed Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm
title_short Rapid Quantification of Microvessels of Three-Dimensional Blood–Brain Barrier Model Using Optical Coherence Tomography and Deep Learning Algorithm
title_sort rapid quantification of microvessels of three-dimensional blood–brain barrier model using optical coherence tomography and deep learning algorithm
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10452445/
https://www.ncbi.nlm.nih.gov/pubmed/37622905
http://dx.doi.org/10.3390/bios13080818
work_keys_str_mv AT zhanghuiting rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT kangdonghee rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT piantinomarie rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT tominagadaisuke rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT fujimuratakashi rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT nakataninoriyuki rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT taylorjnicholas rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT furihatatomomi rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT matsusakimichiya rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm
AT fujitasatoshi rapidquantificationofmicrovesselsofthreedimensionalbloodbrainbarriermodelusingopticalcoherencetomographyanddeeplearningalgorithm