Cargando…

A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images

Coronary luminal dimensions change during the cardiac cycle. However, contemporary volumetric intravascular ultrasound (IVUS) analysis is performed in non-gated images as existing methods to acquire gated or to retrospectively gate IVUS images have failed to dominate in research. We developed a nove...

Descripción completa

Detalles Bibliográficos
Autores principales: Bajaj, Retesh, Huang, Xingru, Kilic, Yakup, Jain, Ajay, Ramasamy, Anantharaman, Torii, Ryo, Moon, James, Koh, Tat, Crake, Tom, Parker, Maurizio K., Tufaro, Vincenzo, Serruys, Patrick W., Pugliese, Francesca, Mathur, Anthony, Baumbach, Andreas, Dijkstra, Jouke, Zhang, Qianni, Bourantas, Christos V.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Netherlands 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8255253/
https://www.ncbi.nlm.nih.gov/pubmed/33590430
http://dx.doi.org/10.1007/s10554-021-02162-x
_version_ 1783717869381484544
author Bajaj, Retesh
Huang, Xingru
Kilic, Yakup
Jain, Ajay
Ramasamy, Anantharaman
Torii, Ryo
Moon, James
Koh, Tat
Crake, Tom
Parker, Maurizio K.
Tufaro, Vincenzo
Serruys, Patrick W.
Pugliese, Francesca
Mathur, Anthony
Baumbach, Andreas
Dijkstra, Jouke
Zhang, Qianni
Bourantas, Christos V.
author_facet Bajaj, Retesh
Huang, Xingru
Kilic, Yakup
Jain, Ajay
Ramasamy, Anantharaman
Torii, Ryo
Moon, James
Koh, Tat
Crake, Tom
Parker, Maurizio K.
Tufaro, Vincenzo
Serruys, Patrick W.
Pugliese, Francesca
Mathur, Anthony
Baumbach, Andreas
Dijkstra, Jouke
Zhang, Qianni
Bourantas, Christos V.
author_sort Bajaj, Retesh
collection PubMed
description Coronary luminal dimensions change during the cardiac cycle. However, contemporary volumetric intravascular ultrasound (IVUS) analysis is performed in non-gated images as existing methods to acquire gated or to retrospectively gate IVUS images have failed to dominate in research. We developed a novel deep learning (DL)-methodology for end-diastolic frame detection in IVUS and compared its efficacy against expert analysts and a previously established methodology using electrocardiographic (ECG)-estimations as reference standard. Near-infrared spectroscopy-IVUS (NIRS-IVUS) data were prospectively acquired from 20 coronary arteries and co-registered with the concurrent ECG-signal to identify end-diastolic frames. A DL-methodology which takes advantage of changes in intensity of corresponding pixels in consecutive NIRS-IVUS frames and consists of a network model designed in a bidirectional gated-recurrent-unit (Bi-GRU) structure was trained to detect end-diastolic frames. The efficacy of the DL-methodology in identifying end-diastolic frames was compared with two expert analysts and a conventional image-based (CIB)-methodology that relies on detecting vessel movement to estimate phases of the cardiac cycle. A window of ± 100 ms from the ECG estimations was used to define accurate end-diastolic frames detection. The ECG-signal identified 3,167 end-diastolic frames. The mean difference between DL and ECG estimations was 3 ± 112 ms while the mean differences between the 1st-analyst and ECG, 2nd-analyst and ECG and CIB-methodology and ECG were 86 ± 192 ms, 78 ± 183 ms and 59 ± 207 ms, respectively. The DL-methodology was able to accurately detect 80.4%, while the two analysts and the CIB-methodology detected 39.0%, 43.4% and 42.8% of end-diastolic frames, respectively (P < 0.05). The DL-methodology can identify NIRS-IVUS end-diastolic frames accurately and should be preferred over expert analysts and CIB-methodologies, which have limited efficacy. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s10554-021-02162-x.
format Online
Article
Text
id pubmed-8255253
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Springer Netherlands
record_format MEDLINE/PubMed
spelling pubmed-82552532021-07-20 A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images Bajaj, Retesh Huang, Xingru Kilic, Yakup Jain, Ajay Ramasamy, Anantharaman Torii, Ryo Moon, James Koh, Tat Crake, Tom Parker, Maurizio K. Tufaro, Vincenzo Serruys, Patrick W. Pugliese, Francesca Mathur, Anthony Baumbach, Andreas Dijkstra, Jouke Zhang, Qianni Bourantas, Christos V. Int J Cardiovasc Imaging Original Paper Coronary luminal dimensions change during the cardiac cycle. However, contemporary volumetric intravascular ultrasound (IVUS) analysis is performed in non-gated images as existing methods to acquire gated or to retrospectively gate IVUS images have failed to dominate in research. We developed a novel deep learning (DL)-methodology for end-diastolic frame detection in IVUS and compared its efficacy against expert analysts and a previously established methodology using electrocardiographic (ECG)-estimations as reference standard. Near-infrared spectroscopy-IVUS (NIRS-IVUS) data were prospectively acquired from 20 coronary arteries and co-registered with the concurrent ECG-signal to identify end-diastolic frames. A DL-methodology which takes advantage of changes in intensity of corresponding pixels in consecutive NIRS-IVUS frames and consists of a network model designed in a bidirectional gated-recurrent-unit (Bi-GRU) structure was trained to detect end-diastolic frames. The efficacy of the DL-methodology in identifying end-diastolic frames was compared with two expert analysts and a conventional image-based (CIB)-methodology that relies on detecting vessel movement to estimate phases of the cardiac cycle. A window of ± 100 ms from the ECG estimations was used to define accurate end-diastolic frames detection. The ECG-signal identified 3,167 end-diastolic frames. The mean difference between DL and ECG estimations was 3 ± 112 ms while the mean differences between the 1st-analyst and ECG, 2nd-analyst and ECG and CIB-methodology and ECG were 86 ± 192 ms, 78 ± 183 ms and 59 ± 207 ms, respectively. The DL-methodology was able to accurately detect 80.4%, while the two analysts and the CIB-methodology detected 39.0%, 43.4% and 42.8% of end-diastolic frames, respectively (P < 0.05). The DL-methodology can identify NIRS-IVUS end-diastolic frames accurately and should be preferred over expert analysts and CIB-methodologies, which have limited efficacy. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s10554-021-02162-x. Springer Netherlands 2021-02-15 2021 /pmc/articles/PMC8255253/ /pubmed/33590430 http://dx.doi.org/10.1007/s10554-021-02162-x Text en © The Author(s) 2021 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Original Paper
Bajaj, Retesh
Huang, Xingru
Kilic, Yakup
Jain, Ajay
Ramasamy, Anantharaman
Torii, Ryo
Moon, James
Koh, Tat
Crake, Tom
Parker, Maurizio K.
Tufaro, Vincenzo
Serruys, Patrick W.
Pugliese, Francesca
Mathur, Anthony
Baumbach, Andreas
Dijkstra, Jouke
Zhang, Qianni
Bourantas, Christos V.
A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
title A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
title_full A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
title_fullStr A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
title_full_unstemmed A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
title_short A deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
title_sort deep learning methodology for the automated detection of end-diastolic frames in intravascular ultrasound images
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8255253/
https://www.ncbi.nlm.nih.gov/pubmed/33590430
http://dx.doi.org/10.1007/s10554-021-02162-x
work_keys_str_mv AT bajajretesh adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT huangxingru adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT kilicyakup adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT jainajay adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT ramasamyanantharaman adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT toriiryo adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT moonjames adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT kohtat adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT craketom adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT parkermauriziok adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT tufarovincenzo adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT serruyspatrickw adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT pugliesefrancesca adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT mathuranthony adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT baumbachandreas adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT dijkstrajouke adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT zhangqianni adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT bourantaschristosv adeeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT bajajretesh deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT huangxingru deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT kilicyakup deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT jainajay deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT ramasamyanantharaman deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT toriiryo deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT moonjames deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT kohtat deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT craketom deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT parkermauriziok deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT tufarovincenzo deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT serruyspatrickw deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT pugliesefrancesca deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT mathuranthony deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT baumbachandreas deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT dijkstrajouke deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT zhangqianni deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages
AT bourantaschristosv deeplearningmethodologyfortheautomateddetectionofenddiastolicframesinintravascularultrasoundimages