Sara Moccia1, Gabriele O Vanone2, Elena De Momi2, Andrea Laborai3, Luca Guastini3, Giorgio Peretti3, Leonardo S Mattos4. 1. Department of Electronics, Information, and Bioengineering, Politecnico di Milano, Milan, Italy; Department of Advanced Robotics, Istituto Italiano di Tecnologia, Genoa, Italy. Electronic address: sara.moccia@iit.it. 2. Department of Electronics, Information, and Bioengineering, Politecnico di Milano, Milan, Italy. 3. Department of Otorhinolaryngology, Head and Neck Surgery, University of Genoa, Genoa, Italy. 4. Department of Advanced Robotics, Istituto Italiano di Tecnologia, Genoa, Italy.
Abstract
BACKGROUND AND OBJECTIVE: Early-stage diagnosis of laryngeal cancer is of primary importance to reduce patient morbidity. Narrow-band imaging (NBI) endoscopy is commonly used for screening purposes, reducing the risks linked to a biopsy but at the cost of some drawbacks, such as large amount of data to review to make the diagnosis. The purpose of this paper is to present a strategy to perform automatic selection of informative endoscopic video frames, which can reduce the amount of data to process and potentially increase diagnosis performance. METHODS: A new method to classify NBI endoscopic frames based on intensity, keypoint and image spatial content features is proposed. Support vector machines with the radial basis function and the one-versus-one scheme are used to classify frames as informative, blurred, with saliva or specular reflections, or underexposed. RESULTS: When tested on a balanced set of 720 images from 18 different laryngoscopic videos, a classification recall of 91% was achieved for informative frames, significantly overcoming three state of the art methods (Wilcoxon rank-signed test, significance level = 0.05). CONCLUSIONS: Due to the high performance in identifying informative frames, the approach is a valuable tool to perform informative frame selection, which can be potentially applied in different fields, such us computer-assisted diagnosis and endoscopic view expansion.
BACKGROUND AND OBJECTIVE: Early-stage diagnosis of laryngeal cancer is of primary importance to reduce patient morbidity. Narrow-band imaging (NBI) endoscopy is commonly used for screening purposes, reducing the risks linked to a biopsy but at the cost of some drawbacks, such as large amount of data to review to make the diagnosis. The purpose of this paper is to present a strategy to perform automatic selection of informative endoscopic video frames, which can reduce the amount of data to process and potentially increase diagnosis performance. METHODS: A new method to classify NBI endoscopic frames based on intensity, keypoint and image spatial content features is proposed. Support vector machines with the radial basis function and the one-versus-one scheme are used to classify frames as informative, blurred, with saliva or specular reflections, or underexposed. RESULTS: When tested on a balanced set of 720 images from 18 different laryngoscopic videos, a classification recall of 91% was achieved for informative frames, significantly overcoming three state of the art methods (Wilcoxon rank-signed test, significance level = 0.05). CONCLUSIONS: Due to the high performance in identifying informative frames, the approach is a valuable tool to perform informative frame selection, which can be potentially applied in different fields, such us computer-assisted diagnosis and endoscopic view expansion.
Authors: Sara Moccia; Simone Foti; Arpita Routray; Francesca Prudente; Alessandro Perin; Raymond F Sekula; Leonardo S Mattos; Jeffrey R Balzer; Wendy Fellows-Mayle; Elena De Momi; Cameron N Riviere Journal: Ann Biomed Eng Date: 2018-07-16 Impact factor: 3.934
Authors: Francesco Missale; Stefano Taboni; Cesare Piazza; Giorgio Peretti; Andrea Luigi Camillo Carobbio; Francesco Mazzola; Giulia Berretti; Andrea Iandelli; Marco Fragale; Francesco Mora; Alberto Paderno; Francesca Del Bon; Giampiero Parrinello; Alberto Deganello Journal: Eur Arch Otorhinolaryngol Date: 2021-03-12 Impact factor: 2.503
Authors: Patrick Schlegel; Stefan Kniesburges; Stephan Dürr; Anne Schützenberger; Michael Döllinger Journal: Sci Rep Date: 2020-06-29 Impact factor: 4.379
Authors: Edoardo Cipolletta; Maria Chiara Fiorentino; Sara Moccia; Irene Guidotti; Walter Grassi; Emilio Filippucci; Emanuele Frontoni Journal: Front Med (Lausanne) Date: 2021-03-01