Endoscopy 2022; 54(S 01): S158-S159
DOI: 10.1055/s-0042-1744991
Abstracts | ESGE Days 2022
ESGE Days 2022 Digital poster exhibition

TRANSFERABILITY OF A CONVOLUTIONAL NEURAL NETWORK TO CHARACTERISE COLORECTAL POLYPS

R. Kader
1   University College London (UCL), Wellcome/EPSRC Centre for Interventional and Surgical Sciences (WEISS), London, United Kingdom
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
A. Mejias
3   Odin Vision, London, United Kingdom
,
I. Shahraz
1   University College London (UCL), Wellcome/EPSRC Centre for Interventional and Surgical Sciences (WEISS), London, United Kingdom
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
S. Hebbar
3   Odin Vision, London, United Kingdom
,
P. Brandao
3   Odin Vision, London, United Kingdom
,
O. Ahmad
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
M. Hussein
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
D. Toth
3   Odin Vision, London, United Kingdom
,
R. Vega
4   University College London Hospital, London, United Kingdom
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
E. Seward
4   University College London Hospital, London, United Kingdom
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
D. Kohoutova
5   2nd Department of Internal Medicine–Gastroenterology, Charles University, Faculty of Medicine in Hradec Kralove, University Hospital, Sokolska, Hradec Kralove, Czech Republic
6   The Royal Marsden Hospital NHS Foundation Trust, London, United Kingdom
,
S. Rejchrt
5   2nd Department of Internal Medicine–Gastroenterology, Charles University, Faculty of Medicine in Hradec Kralove, University Hospital, Sokolska, Hradec Kralove, Czech Republic
,
J. Bures
5   2nd Department of Internal Medicine–Gastroenterology, Charles University, Faculty of Medicine in Hradec Kralove, University Hospital, Sokolska, Hradec Kralove, Czech Republic
,
P. Mountney
3   Odin Vision, London, United Kingdom
,
D. Stoyanov
1   University College London (UCL), Wellcome/EPSRC Centre for Interventional and Surgical Sciences (WEISS), London, United Kingdom
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
,
L.B. Lovat
1   University College London (UCL), Wellcome/EPSRC Centre for Interventional and Surgical Sciences (WEISS), London, United Kingdom
2   UCL, Division of Surgery and Interventional Sciences, London, United Kingdom
4   University College London Hospital, London, United Kingdom
› Author Affiliations
 

Aims There is a lack of studies evaluating the transferability of polyp characterisation artificial intelligence systems to different populations from the institution where the training data was collected.

We aimed to train a convolutional neural network (CNN) to characterise colorectal polyps as adenoma and non-adenoma using data from two institutions (UK, Czech Republic) and to assess its transferability to a new patient population (Spain).

Methods High-quality and moderate-quality images in narrow-band imaging (NBI) and NBI-Near Focus were annotated with bounding boxes around polyps and labelled with histopathology. These were referenced as the gold standard.

We developed a ResNet-101 CNN using 16,832 frames from 229 polyp videos (London, UK) and 451 still images from 266 polyps (Hradec Kralove, Czech Republic).

We assessed the CNN against two internal and one external dataset ([Table 1]); (1) Test-set I (London), consisted of 157 polyp videos (111 diminutive), including 14,320 video frames (Olympus 260+290) (2) Test-set II (Hradec Kralove) consisted of 250 polyps (125 diminutive), including 487 still frames (Olympus 180+190) (3) Test-set III (Basque), the publicly accessible PICCOLO dataset, consisted of 53 polyps, including 855 frames (Olympus 190).

Table 1

Polyps

Test-set I (London, UK)

Test-set II (Hradec Kralove, Czech Republic)

Test-set III (Basque, Spain)

Total

Adenomas

95

167

35

297

Hyperplastic

35

52

17

104

Sessile serrated lesions/ Traditional serrated adenomas

27

31

1

59

Total number of polyps (frames)

157 (14,320)

250 (487)

53 (855)

460 (15,662)

Results On the per-frame analysis, the sensitivity for adenoma characterisation was 92% in test-set I and 90% in test-set II, 89% and 85% specificity, and 96% and 93% area under a curve (AUC). For the external test-set III, the CNN characterised adenomas with 86% sensitivity, 98% specificity and 99% AUC.

Conclusions A CNN trained using data from two nationalities transferred well to an external patient population.



Publication History

Article published online:
14 April 2022

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