Abbonarsi

High pooled performance of convolutional neural networks in computer-aided diagnosis of GI ulcers and/or hemorrhage on wireless capsule endoscopy images: a systematic review and meta-analysis - 18/01/21

Doi : 10.1016/j.gie.2020.07.038 
Babu P. Mohan, MD 1, Shahab R. Khan, MBBS 2, Lena L. Kassab, MD, MBA 3, Suresh Ponnada, MD, MPH 4, Saurabh Chandan, MD 5, Tauseef Ali, MD 6, Parambir S. Dulai, MD 7, Douglas G. Adler, MD 1, Gursimran S. Kochhar, MD 8,
1 Gastroenterology & Hepatology, University of Utah, Salt Lake City, Utah, USA 
2 Gastroenterology, Rush University Medical Center, Chicago, Illinois, USA 
3 Internal Medicine, Mayo Clinic, Rochester, Minnesota, USA 
4 Internal Medicine, Roanoke Medical Center, Roanoke, Virginia, USA 
5 Gastroenterology and Hepatology, University of Nebraska Medical Center, Omaha, Nebraska, USA 
6 Gastroenterology, University of Oklahoma/Saint Anthony Hospital, Oklahoma City, Oklahoma, USA 
7 Gastroenterology and Hepatology, University of California, San Diego, California, USA 
8 Division of Gastroenterology and Hepatology, Allegheny Health Network, Pittsburgh, Pennsylvania, USA 

Reprint requests: Gursimran Singh Kochhar, MD, FACP, CNSC, Interventional IBD & Therapeutic Endoscopy, Division of Gastroenterology, Hepatology & Nutrition, Allegheny Health Network, 1307, Federal Street, Suite B-100, Pittsburgh, PA 15212.Interventional IBD & Therapeutic EndoscopyDivision of GastroenterologyHepatology & NutritionAllegheny Health Network1307, Federal StreetSuite B-100PittsburghPA15212

Abstract

Background and Aims

Diagnosis of GI ulcers and/or hemorrhage by wireless capsule endoscopy (WCE) is limited by the physician-dependent, tedious, time-consuming process of image and/ or video classification. Computer-aided diagnosis (CAD) by convolutional neural network (CNN)-based machine learning may help reduce this burden. Our aim was to conduct a meta-analysis and appraise the reported data.

Methods

Multiple databases were searched (from inception to November 2019), and studies that reported on the performance of CNN in the diagnosis of GI ulcerations and/or hemorrhage on WCE were selected. A random-effects model was used to calculate the pooled rates. In cases where multiple 2 × 2 contingency tables were provided for different thresholds, we assumed the data tables were independent from each other. Heterogeneity was assessed by I2% and 95% prediction intervals.

Results

Nine studies were included in our final analysis that evaluated the performance of CNN-based CAD of GI ulcers and/or hemorrhage by WCE. The pooled accuracy was 95.4% (95% confidence interval [CI], 94.3-96.3), sensitivity was 95.5% (95% CI, 94-96.5), specificity was 95.8% (95% CI, 94.7-96.6), positive predictive value was 95.8% (95% CI, 90.5-98.2), and negative predictive value was 96.8% (95% CI, 94.9-98.1). I2% heterogeneity was negligible except for the pooled positive predictive value.

Conclusions

Based on our meta-analysis, CNN-based CAD of GI ulcerations and/or hemorrhage on WCE achieves a high-level performance. The quality of the evidence is robust, and therefore CNN-based CAD has the potential to become the first choice of machine learning to optimize WCE image/video reading.

Il testo completo di questo articolo è disponibile in PDF.

Abbreviations : CAD, CI, CNN, NPV, PI, PPV, WCE


Mappa


 If you would like to chat with an author of this article, you may contact Dr Kochhar at gursimran.kochhar@ahn.org or Dr Mohan at babupmohan@gmail.com.
 DISCLOSURE: Dr Dulai has been supported by an American Gastroenterology Association Research Scholar Award, has been a consultant for and received grant support from Takeda, Janssen, Pfizer, and AbbVie. Dr Ali has been a consultant and/or speaker for Takeda, Janssen, Pfizer, AbbVie, Merck, and Prometheus Labs. All authors disclosed no financial relationships.


© 2021  American Society for Gastrointestinal Endoscopy. Pubblicato da Elsevier Masson SAS. Tutti i diritti riservati.
Aggiungere alla mia biblioteca Togliere dalla mia biblioteca Stampare
Esportazione

    Citazioni Export

  • File

  • Contenuto

Vol 93 - N° 2

P. 356 - febbraio 2021 Ritorno al numero
Articolo precedente Articolo precedente
  • Screening for Barrett’s esophagus after sleeve gastrectomy
  • Kevin D. Platt, Allison R. Schulman
| Articolo seguente Articolo seguente
  • The exceptional performance of deep learning for capsule endoscopy: Will such quality be maintained in clinical scenarios?
  • Tomonori Aoki, Atsuo Yamada, Kazuhiko Koike

Benvenuto su EM|consulte, il riferimento dei professionisti della salute.
L'accesso al testo integrale di questo articolo richiede un abbonamento.

Già abbonato a @@106933@@ rivista ?

@@150455@@ Voir plus

Il mio account


Dichiarazione CNIL

EM-CONSULTE.COM è registrato presso la CNIL, dichiarazione n. 1286925.

Ai sensi della legge n. 78-17 del 6 gennaio 1978 sull'informatica, sui file e sulle libertà, Lei puo' esercitare i diritti di opposizione (art.26 della legge), di accesso (art.34 a 38 Legge), e di rettifica (art.36 della legge) per i dati che La riguardano. Lei puo' cosi chiedere che siano rettificati, compeltati, chiariti, aggiornati o cancellati i suoi dati personali inesati, incompleti, equivoci, obsoleti o la cui raccolta o di uso o di conservazione sono vietati.
Le informazioni relative ai visitatori del nostro sito, compresa la loro identità, sono confidenziali.
Il responsabile del sito si impegna sull'onore a rispettare le condizioni legali di confidenzialità applicabili in Francia e a non divulgare tali informazioni a terzi.


Tutto il contenuto di questo sito: Copyright © 2026 Elsevier, i suoi licenziatari e contributori. Tutti i diritti sono riservati. Inclusi diritti per estrazione di testo e di dati, addestramento dell’intelligenza artificiale, e tecnologie simili. Per tutto il contenuto ‘open access’ sono applicati i termini della licenza Creative Commons.