Cargando…

Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)

Plasma lipoproteins are important carriers of cholesterol and have been linked strongly to cardiovascular disease (CVD). Our study aimed to achieve fine-grained measurements of lipoprotein subpopulations such as low-density lipoprotein (LDL), lipoprotein(a) (Lp(a), or remnant lipoproteins (RLP) usin...

Descripción completa

Detalles Bibliográficos
Autores principales: Giesecke, Yvonne, Soete, Samuel, MacKinnon, Katarzyna, Tsiaras, Thanasis, Ward, Madeline, Althobaiti, Mohammed, Suveges, Tamas, Lucocq, James E., McKenna, Stephen J., Lucocq, John M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7503711/
https://www.ncbi.nlm.nih.gov/pubmed/32887372
http://dx.doi.org/10.3390/ijms21176373
_version_ 1783584457485189120
author Giesecke, Yvonne
Soete, Samuel
MacKinnon, Katarzyna
Tsiaras, Thanasis
Ward, Madeline
Althobaiti, Mohammed
Suveges, Tamas
Lucocq, James E.
McKenna, Stephen J.
Lucocq, John M.
author_facet Giesecke, Yvonne
Soete, Samuel
MacKinnon, Katarzyna
Tsiaras, Thanasis
Ward, Madeline
Althobaiti, Mohammed
Suveges, Tamas
Lucocq, James E.
McKenna, Stephen J.
Lucocq, John M.
author_sort Giesecke, Yvonne
collection PubMed
description Plasma lipoproteins are important carriers of cholesterol and have been linked strongly to cardiovascular disease (CVD). Our study aimed to achieve fine-grained measurements of lipoprotein subpopulations such as low-density lipoprotein (LDL), lipoprotein(a) (Lp(a), or remnant lipoproteins (RLP) using electron microscopy combined with machine learning tools from microliter samples of human plasma. In the reported method, lipoproteins were absorbed onto electron microscopy (EM) support films from diluted plasma and embedded in thin films of methyl cellulose (MC) containing mixed metal stains, providing intense edge contrast. The results show that LPs have a continuous frequency distribution of sizes, extending from LDL (> 15 nm) to intermediate density lipoprotein (IDL) and very low-density lipoproteins (VLDL). Furthermore, mixed metal staining produces striking “positive” contrast of specific antibodies attached to lipoproteins providing quantitative data on apolipoprotein(a)-positive Lp(a) or apolipoprotein B (ApoB)-positive particles. To enable automatic particle characterization, we also demonstrated efficient segmentation of lipoprotein particles using deep learning software characterized by a Mask Region-based Convolutional Neural Networks (R-CNN) architecture with transfer learning. In future, EM and machine learning could be combined with microarray deposition and automated imaging for higher throughput quantitation of lipoproteins associated with CVD risk.
format Online
Article
Text
id pubmed-7503711
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-75037112020-09-27 Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a) Giesecke, Yvonne Soete, Samuel MacKinnon, Katarzyna Tsiaras, Thanasis Ward, Madeline Althobaiti, Mohammed Suveges, Tamas Lucocq, James E. McKenna, Stephen J. Lucocq, John M. Int J Mol Sci Article Plasma lipoproteins are important carriers of cholesterol and have been linked strongly to cardiovascular disease (CVD). Our study aimed to achieve fine-grained measurements of lipoprotein subpopulations such as low-density lipoprotein (LDL), lipoprotein(a) (Lp(a), or remnant lipoproteins (RLP) using electron microscopy combined with machine learning tools from microliter samples of human plasma. In the reported method, lipoproteins were absorbed onto electron microscopy (EM) support films from diluted plasma and embedded in thin films of methyl cellulose (MC) containing mixed metal stains, providing intense edge contrast. The results show that LPs have a continuous frequency distribution of sizes, extending from LDL (> 15 nm) to intermediate density lipoprotein (IDL) and very low-density lipoproteins (VLDL). Furthermore, mixed metal staining produces striking “positive” contrast of specific antibodies attached to lipoproteins providing quantitative data on apolipoprotein(a)-positive Lp(a) or apolipoprotein B (ApoB)-positive particles. To enable automatic particle characterization, we also demonstrated efficient segmentation of lipoprotein particles using deep learning software characterized by a Mask Region-based Convolutional Neural Networks (R-CNN) architecture with transfer learning. In future, EM and machine learning could be combined with microarray deposition and automated imaging for higher throughput quantitation of lipoproteins associated with CVD risk. MDPI 2020-09-02 /pmc/articles/PMC7503711/ /pubmed/32887372 http://dx.doi.org/10.3390/ijms21176373 Text en © 2020 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Giesecke, Yvonne
Soete, Samuel
MacKinnon, Katarzyna
Tsiaras, Thanasis
Ward, Madeline
Althobaiti, Mohammed
Suveges, Tamas
Lucocq, James E.
McKenna, Stephen J.
Lucocq, John M.
Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)
title Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)
title_full Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)
title_fullStr Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)
title_full_unstemmed Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)
title_short Developing Electron Microscopy Tools for Profiling Plasma Lipoproteins Using Methyl Cellulose Embedment, Machine Learning and Immunodetection of Apolipoprotein B and Apolipoprotein(a)
title_sort developing electron microscopy tools for profiling plasma lipoproteins using methyl cellulose embedment, machine learning and immunodetection of apolipoprotein b and apolipoprotein(a)
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7503711/
https://www.ncbi.nlm.nih.gov/pubmed/32887372
http://dx.doi.org/10.3390/ijms21176373
work_keys_str_mv AT gieseckeyvonne developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT soetesamuel developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT mackinnonkatarzyna developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT tsiarasthanasis developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT wardmadeline developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT althobaitimohammed developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT suvegestamas developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT lucocqjamese developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT mckennastephenj developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina
AT lucocqjohnm developingelectronmicroscopytoolsforprofilingplasmalipoproteinsusingmethylcelluloseembedmentmachinelearningandimmunodetectionofapolipoproteinbandapolipoproteina