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Pregled bibliografske jedinice broj: 1106937

Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience


Eberhard, Matthias; Nadarevic, Tin; Cousin, Andrej; von Spiczak, Jochen; Hinzpeter, Ricarda; Euler, Andre; Morsbach, Fabian; Manka, Robert; Keller, Dagmar I.; Alkadhi, Hatem
Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience // Cardiovascular Diagnosis and Therapy, 10 (2020), 4; 820-830 doi:10.21037/cdt-20-381 (međunarodna recenzija, članak, znanstveni)


CROSBI ID: 1106937 Za ispravke kontaktirajte CROSBI podršku putem web obrasca

Naslov
Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience

Autori
Eberhard, Matthias ; Nadarevic, Tin ; Cousin, Andrej ; von Spiczak, Jochen ; Hinzpeter, Ricarda ; Euler, Andre ; Morsbach, Fabian ; Manka, Robert ; Keller, Dagmar I. ; Alkadhi, Hatem

Izvornik
Cardiovascular Diagnosis and Therapy (2223-3652) 10 (2020), 4; 820-830

Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni

Ključne riječi
Acute coronary syndrome (ACS) ; computed tomography angiography ; fractional flow reserve ; myocardial ; machine learning

Sažetak
Background: Computed tomography (CT)-derived fractional flow reserve (FFRCT) enables the non- invasive functional assessment of coronary artery stenosis. We evaluated the feasibility and potential clinical role of FFRCT in patients presenting to the emergency department with acute chest pain who underwent chest-pain CT (CPCT). Methods: For this retrospective IRB-approved study, we included 56 patients (median age: 62 years, 14 females) with acute chest pain who underwent CPCT and who had at least a mild (≥25% diameter) coronary artery stenosis. CPCT was evaluated for the presence of acute plaque rupture and vulnerable plaque features. FFRCT measurements were performed using a machine learning-based software. We assessed the agreement between the results from FFRCT and patient outcome (including results from invasive catheter angiography and from any non- invasive cardiac imaging test, final clinical diagnosis and revascularization) for a follow- up of 3 months. Results: FFRCT was technically feasible in 38/56 patients (68%). Eleven of the 38 patients (29%) showed acute plaque rupture in CPCT ; all of them underwent immediate coronary revascularization. Of the remaining 27 patients (71%), 16 patients showed vulnerable plaque features (59%), of whom 11 (69%) were diagnosed with acute coronary syndrome (ACS) and 10 (63%) underwent coronary revascularization. In patients with vulnerable plaque features in CPCT, FFRCT had an agreement with outcome in 12/16 patients (75%). In patients without vulnerable plaque features (n=11), one patient showed myocardial ischemia (9%). In these patients, FFRCT and patient outcome showed an agreement in 10/11 patients (91%). Conclusions: Our preliminary data show that FFRCT is feasible in patients with acute chest pain who undergo CPCT provided that image quality is sufficient. FFRCT has the potential to improve patient triage by reducing further downstream testing but appears of limited value in patients with CT signs of acute plaque rupture.

Izvorni jezik
Engleski

Znanstvena područja
Kliničke medicinske znanosti



POVEZANOST RADA


Ustanove:
Medicinski fakultet, Rijeka,
Klinički bolnički centar Rijeka

Profili:

Avatar Url Tin Nadarević (autor)

Poveznice na cjeloviti tekst rada:

doi cdt.amegroups.com

Citiraj ovu publikaciju:

Eberhard, Matthias; Nadarevic, Tin; Cousin, Andrej; von Spiczak, Jochen; Hinzpeter, Ricarda; Euler, Andre; Morsbach, Fabian; Manka, Robert; Keller, Dagmar I.; Alkadhi, Hatem
Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience // Cardiovascular Diagnosis and Therapy, 10 (2020), 4; 820-830 doi:10.21037/cdt-20-381 (međunarodna recenzija, članak, znanstveni)
Eberhard, M., Nadarevic, T., Cousin, A., von Spiczak, J., Hinzpeter, R., Euler, A., Morsbach, F., Manka, R., Keller, D. & Alkadhi, H. (2020) Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience. Cardiovascular Diagnosis and Therapy, 10 (4), 820-830 doi:10.21037/cdt-20-381.
@article{article, author = {Eberhard, Matthias and Nadarevic, Tin and Cousin, Andrej and von Spiczak, Jochen and Hinzpeter, Ricarda and Euler, Andre and Morsbach, Fabian and Manka, Robert and Keller, Dagmar I. and Alkadhi, Hatem}, year = {2020}, pages = {820-830}, DOI = {10.21037/cdt-20-381}, keywords = {Acute coronary syndrome (ACS), computed tomography angiography, fractional flow reserve, myocardial, machine learning}, journal = {Cardiovascular Diagnosis and Therapy}, doi = {10.21037/cdt-20-381}, volume = {10}, number = {4}, issn = {2223-3652}, title = {Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience}, keyword = {Acute coronary syndrome (ACS), computed tomography angiography, fractional flow reserve, myocardial, machine learning} }
@article{article, author = {Eberhard, Matthias and Nadarevic, Tin and Cousin, Andrej and von Spiczak, Jochen and Hinzpeter, Ricarda and Euler, Andre and Morsbach, Fabian and Manka, Robert and Keller, Dagmar I. and Alkadhi, Hatem}, year = {2020}, pages = {820-830}, DOI = {10.21037/cdt-20-381}, keywords = {Acute coronary syndrome (ACS), computed tomography angiography, fractional flow reserve, myocardial, machine learning}, journal = {Cardiovascular Diagnosis and Therapy}, doi = {10.21037/cdt-20-381}, volume = {10}, number = {4}, issn = {2223-3652}, title = {Machine learning-based CT fractional flow reserve assessment in acute chest pain: first experience}, keyword = {Acute coronary syndrome (ACS), computed tomography angiography, fractional flow reserve, myocardial, machine learning} }

Časopis indeksira:


  • Current Contents Connect (CCC)
  • Web of Science Core Collection (WoSCC)
    • Science Citation Index Expanded (SCI-EXP)
    • SCI-EXP, SSCI i/ili A&HCI
    • Emerging Sources Citation Index (ESCI)
  • Scopus


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