Cargando…

Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity

BACKGROUND: Intracranial occlusion recanalization fails in 20% of endovascular thrombectomy procedures, and thrombus composition is likely to be an important factor. In this study, we demonstrate that the combination of electrical impedance spectroscopy (EIS) and machine learning constitutes a novel...

Descripción completa

Detalles Bibliográficos
Autores principales: Messina, Pierluca, Garcia, Cédric, Rambeau, Joachim, Darcourt, Jean, Balland, Ronan, Carreel, Bruno, Cottance, Myline, Gusarova, Elena, Lafaurie-Janvore, Julie, Lebedev, Gor, Bozsak, Franz, Barakat, Abdul I, Payrastre, Bernard, Cognard, Christophe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10314040/
https://www.ncbi.nlm.nih.gov/pubmed/35478173
http://dx.doi.org/10.1136/neurintsurg-2021-018631
_version_ 1785067236887625728
author Messina, Pierluca
Garcia, Cédric
Rambeau, Joachim
Darcourt, Jean
Balland, Ronan
Carreel, Bruno
Cottance, Myline
Gusarova, Elena
Lafaurie-Janvore, Julie
Lebedev, Gor
Bozsak, Franz
Barakat, Abdul I
Payrastre, Bernard
Cognard, Christophe
author_facet Messina, Pierluca
Garcia, Cédric
Rambeau, Joachim
Darcourt, Jean
Balland, Ronan
Carreel, Bruno
Cottance, Myline
Gusarova, Elena
Lafaurie-Janvore, Julie
Lebedev, Gor
Bozsak, Franz
Barakat, Abdul I
Payrastre, Bernard
Cognard, Christophe
author_sort Messina, Pierluca
collection PubMed
description BACKGROUND: Intracranial occlusion recanalization fails in 20% of endovascular thrombectomy procedures, and thrombus composition is likely to be an important factor. In this study, we demonstrate that the combination of electrical impedance spectroscopy (EIS) and machine learning constitutes a novel and highly accurate method for the identification of different human thrombus types. METHODS: 134 samples, subdivided into four categories, were analyzed by EIS: 29 ‘White’, 26 ‘Mixed’, 12 ‘Red’ thrombi, and 67 liquid ‘Blood’ samples. Thrombi were generated in vitro using citrated human blood from five healthy volunteers. Histological analysis was performed to validate the thrombus categorization based on red blood cell content. A machine learning prediction model was trained on impedance data to differentiate blood samples from any type of thrombus and in between the four sample categories. RESULTS: Histological analysis confirmed the similarity between the composition of in vitro generated thrombi and retrieved human thrombi. The prediction model yielded a sensitivity/specificity of 90%/99% for distinguishing blood samples from thrombi and a global accuracy of 88% for differentiating among the four sample categories. CONCLUSIONS: Combining EIS measurements with machine learning provides a highly effective approach for discriminating among different thrombus types and liquid blood. These findings raise the possibility of developing a probe-like device (eg, a neurovascular guidewire) integrating an impedance-based sensor. This sensor, placed in the distal part of the smart device, would allow the characterization of the probed thrombus on contact. The information could help physicians identify optimal thrombectomy strategies to improve outcomes for stroke patients.
format Online
Article
Text
id pubmed-10314040
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher BMJ Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-103140402023-07-02 Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity Messina, Pierluca Garcia, Cédric Rambeau, Joachim Darcourt, Jean Balland, Ronan Carreel, Bruno Cottance, Myline Gusarova, Elena Lafaurie-Janvore, Julie Lebedev, Gor Bozsak, Franz Barakat, Abdul I Payrastre, Bernard Cognard, Christophe J Neurointerv Surg Ischemic Stroke BACKGROUND: Intracranial occlusion recanalization fails in 20% of endovascular thrombectomy procedures, and thrombus composition is likely to be an important factor. In this study, we demonstrate that the combination of electrical impedance spectroscopy (EIS) and machine learning constitutes a novel and highly accurate method for the identification of different human thrombus types. METHODS: 134 samples, subdivided into four categories, were analyzed by EIS: 29 ‘White’, 26 ‘Mixed’, 12 ‘Red’ thrombi, and 67 liquid ‘Blood’ samples. Thrombi were generated in vitro using citrated human blood from five healthy volunteers. Histological analysis was performed to validate the thrombus categorization based on red blood cell content. A machine learning prediction model was trained on impedance data to differentiate blood samples from any type of thrombus and in between the four sample categories. RESULTS: Histological analysis confirmed the similarity between the composition of in vitro generated thrombi and retrieved human thrombi. The prediction model yielded a sensitivity/specificity of 90%/99% for distinguishing blood samples from thrombi and a global accuracy of 88% for differentiating among the four sample categories. CONCLUSIONS: Combining EIS measurements with machine learning provides a highly effective approach for discriminating among different thrombus types and liquid blood. These findings raise the possibility of developing a probe-like device (eg, a neurovascular guidewire) integrating an impedance-based sensor. This sensor, placed in the distal part of the smart device, would allow the characterization of the probed thrombus on contact. The information could help physicians identify optimal thrombectomy strategies to improve outcomes for stroke patients. BMJ Publishing Group 2023-06 2022-04-27 /pmc/articles/PMC10314040/ /pubmed/35478173 http://dx.doi.org/10.1136/neurintsurg-2021-018631 Text en © Author(s) (or their employer(s)) 2023. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Ischemic Stroke
Messina, Pierluca
Garcia, Cédric
Rambeau, Joachim
Darcourt, Jean
Balland, Ronan
Carreel, Bruno
Cottance, Myline
Gusarova, Elena
Lafaurie-Janvore, Julie
Lebedev, Gor
Bozsak, Franz
Barakat, Abdul I
Payrastre, Bernard
Cognard, Christophe
Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
title Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
title_full Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
title_fullStr Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
title_full_unstemmed Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
title_short Impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
title_sort impedance-based sensors discriminate among different types of blood thrombi with very high specificity and sensitivity
topic Ischemic Stroke
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10314040/
https://www.ncbi.nlm.nih.gov/pubmed/35478173
http://dx.doi.org/10.1136/neurintsurg-2021-018631
work_keys_str_mv AT messinapierluca impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT garciacedric impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT rambeaujoachim impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT darcourtjean impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT ballandronan impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT carreelbruno impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT cottancemyline impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT gusarovaelena impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT lafauriejanvorejulie impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT lebedevgor impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT bozsakfranz impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT barakatabduli impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT payrastrebernard impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity
AT cognardchristophe impedancebasedsensorsdiscriminateamongdifferenttypesofbloodthrombiwithveryhighspecificityandsensitivity