Real-time polyp detection model using convolutional neural networks

被引:0
|
作者
Alba Nogueira-Rodríguez
Rubén Domínguez-Carbajales
Fernando Campos-Tato
Jesús Herrero
Manuel Puga
David Remedios
Laura Rivas
Eloy Sánchez
Águeda Iglesias
Joaquín Cubiella
Florentino Fdez-Riverola
Hugo López-Fernández
Miguel Reboiro-Jato
Daniel Glez-Peña
机构
[1] Department of Computer Science,CINBIO, Universidade de Vigo
[2] ESEI - Escuela Superior de Ingeniería Informática,SING Research Group
[3] Galicia Sur Health Research Institute (IIS Galicia Sur),Department of Gastroenterology
[4] SERGAS-UVIGO,Instituto de Investigação E Inovação Em Saúde (I3S)
[5] Servicio de Sistemas y Tecnologías de la Información,undefined
[6] Complexo Hospitalario Universitario de Ourense,undefined
[7] Complexo Hospitalario Universitario de Ourense,undefined
[8] Instituto de Investigación Sanitaria Galicia Sur,undefined
[9] Centro de Investigación Biomédica en Red de Enfermedades Hepáticas y Digestivas (CIBERehd),undefined
[10] Universidade Do Porto,undefined
[11] Instituto de Biologia Molecular E Celular (IBMC),undefined
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关键词
Colorectal cancer; Polyp detection; Deep learning; Real time;
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学科分类号
摘要
Colorectal cancer is a major health problem, where advances towards computer-aided diagnosis (CAD) systems to assist the endoscopist can be a promising path to improvement. Here, a deep learning model for real-time polyp detection based on a pre-trained YOLOv3 (You Only Look Once) architecture and complemented with a post-processing step based on an object-tracking algorithm to reduce false positives is reported. The base YOLOv3 network was fine-tuned using a dataset composed of 28,576 images labelled with locations of 941 polyps that will be made public soon. In a frame-based evaluation using isolated images containing polyps, a general F1 score of 0.88 was achieved (recall = 0.87, precision = 0.89), with lower predictive performance in flat polyps, but higher for sessile, and pedunculated morphologies, as well as with the usage of narrow band imaging, whereas polyp size < 5 mm does not seem to have significant impact. In a polyp-based evaluation using polyp and normal mucosa videos, with a positive criterion defined as the presence of at least one 50-frames-length (window size) segment with a ratio of 75% of frames with predicted bounding boxes (frames positivity), 72.61% of sensitivity (95% CI 68.99–75.95) and 83.04% of specificity (95% CI 76.70–87.92) were achieved (Youden = 0.55, diagnostic odds ratio (DOR) = 12.98). When the positive criterion is less stringent (window size = 25, frames positivity = 50%), sensitivity reaches around 90% (sensitivity = 89.91%, 95% CI 87.20–91.94; specificity = 54.97%, 95% CI 47.49–62.24; Youden = 0.45; DOR = 10.76). The object-tracking algorithm has demonstrated a significant improvement in specificity whereas maintaining sensitivity, as well as a marginal impact on computational performance. These results suggest that the model could be effectively integrated into a CAD system.
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页码:10375 / 10396
页数:21
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