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      Catheter segmentation in X-ray fluoroscopy using synthetic data and transfer learning with light U-nets

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          Highlights

          • Fully-automated, real-time catheter and guidewire segmentation in fluoroscopy using CNNs.

          • Two-stage training strategy based on transfer learning technique, using synthetic images with predefined labelled segmentation.

          • Methods to reduce the need of manual pixel-level labelling to facilitate the development of CNN models for semantic segmentation, especially in the medical field.

          • Lightweight CNN model with a decreased number of network parameters which results in more efficient training and faster run times (84% reduction in testing time compared to the state-of-the-art).

          Abstract

          Background and objectivesAutomated segmentation and tracking of surgical instruments and catheters under X-ray fluoroscopy hold the potential for enhanced image guidance in catheter-based endovascular procedures. This article presents a novel method for real-time segmentation of catheters and guidewires in 2d X-ray images. We employ Convolutional Neural Networks (CNNs) and propose a transfer learning approach, using synthetic fluoroscopic images, to develop a lightweight version of the U-Net architecture. Our strategy, requiring a small amount of manually annotated data, streamlines the training process and results in a U-Net model, which achieves comparable performance to the state-of-the-art segmentation, with a decreased number of trainable parameters.

          MethodsThe proposed transfer learning approach exploits high-fidelity synthetic images generated from real fluroscopic backgrounds. We implement a two-stage process, initial end-to-end training and fine-tuning, to develop two versions of our model, using synthetic and phantom fluoroscopic images independently. A small number of manually annotated in-vivo images is employed to fine-tune the deepest 7 layers of the U-Net architecture, producing a network specialized for pixel-wise catheter/guidewire segmentation. The network takes as input a single grayscale image and outputs the segmentation result as a binary mask against the background.

          ResultsEvaluation is carried out with images from in-vivo fluoroscopic video sequences from six endovascular procedures, with different surgical setups. We validate the effectiveness of developing the U-Net models using synthetic data, in tests where fine-tuning and testing in-vivo takes place both by dividing data from all procedures into independent fine-tuning/testing subsets as well as by using different in-vivo sequences. Accurate catheter/guidewire segmentation (average Dice coefficient of  ~ 0.55,  ~ 0.26 and  ~ 0.17) is obtained with both U-Net models. Compared to the state-of-the-art CNN models, the proposed U-Net achieves comparable performance ( ± 5% average Dice coefficients) in terms of segmentation accuracy, while yielding a 84% reduction of the testing time. This adds flexibility for real-time operation and makes our network adaptable to increased input resolution.

          ConclusionsThis work presents a new approach in the development of CNN models for pixel-wise segmentation of surgical catheters in X-ray fluoroscopy, exploiting synthetic images and transfer learning. Our methodology reduces the need for manually annotating large volumes of data for training. This represents an important advantage, given that manual pixel-wise annotations is a key bottleneck in developing CNN segmentation models. Combined with a simplified U-Net model, our work yields significant advantages compared to current state-of-the-art solutions.

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          Most cited references37

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          U-Net: Convolutional Networks for Biomedical Image Segmentation

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            Fully convolutional networks for semantic segmentation

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              Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning

              Remarkable progress has been made in image recognition, primarily due to the availability of large-scale annotated datasets and deep convolutional neural networks (CNNs). CNNs enable learning data-driven, highly representative, hierarchical image features from sufficient training data. However, obtaining datasets as comprehensively annotated as ImageNet in the medical imaging domain remains a challenge. There are currently three major techniques that successfully employ CNNs to medical image classification: training the CNN from scratch, using off-the-shelf pre-trained CNN features, and conducting unsupervised CNN pre-training with supervised fine-tuning. Another effective method is transfer learning, i.e., fine-tuning CNN models pre-trained from natural image dataset to medical image tasks. In this paper, we exploit three important, but previously understudied factors of employing deep convolutional neural networks to computer-aided detection problems. We first explore and evaluate different CNN architectures. The studied models contain 5 thousand to 160 million parameters, and vary in numbers of layers. We then evaluate the influence of dataset scale and spatial image context on performance. Finally, we examine when and why transfer learning from pre-trained ImageNet (via fine-tuning) can be useful. We study two specific computer-aided detection (CADe) problems, namely thoraco-abdominal lymph node (LN) detection and interstitial lung disease (ILD) classification. We achieve the state-of-the-art performance on the mediastinal LN detection, and report the first five-fold cross-validation classification results on predicting axial CT slices with ILD categories. Our extensive empirical evaluation, CNN model analysis and valuable insights can be extended to the design of high performance CAD systems for other medical imaging tasks.
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                Author and article information

                Contributors
                Journal
                Comput Methods Programs Biomed
                Comput Methods Programs Biomed
                Computer Methods and Programs in Biomedicine
                Elsevier Scientific Publishers
                0169-2607
                1872-7565
                1 August 2020
                August 2020
                : 192
                : 105420
                Affiliations
                [a ]The BioRobotics Institute, Scuola Superiore Sant’Anna, Pisa, Italy
                [b ]Department of Excellence in Robotics & AI, Scuola Superiore SantâĂŹAnna, 56127 Pisa, Italy
                [c ]Wellcome/EPSRC Centre for Interventional and Surgical Sciences, University College London, London, U.K
                [d ]School of Electronic and Electrical Engineering, University of Leeds, Leeds, U.K
                Author notes
                [* ]Corresponding author. Scuola Superiore Sant’Anna, Viale Rinaldo Piaggio, 34, 56025 Pontedera PI, Italy. marta.gherardini@ 123456santannapisa.it
                Article
                S0169-2607(19)31230-1 105420
                10.1016/j.cmpb.2020.105420
                7903142
                32171151
                d5cd2aa9-b144-4a65-b265-58cc2954c722
                © 2020 The Authors. Published by Elsevier B.V.

                This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

                History
                : 25 July 2019
                : 20 February 2020
                : 26 February 2020
                Categories
                Article

                Bioinformatics & Computational biology
                catheter segmentation,deep learning,fluoroscopy,transfer learning

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