期刊论文详细信息
Applied Sciences
Region-of-Interest-Based Cardiac Image Segmentation with Deep Learning
Anca Andreica1  Simona Manole1  Raul-Ronald Galea1  Zoltán Bálint1  Laura Diosan1  Loredana Popa1 
[1] IMOGEN Research Institute, County Clinical Emergency Hospital, Clinicilor, 1-3, Cluj-Napoca, 400008 Cluj, Romania;
关键词: cardiac image segmentation;    deep learning;    MRI image analysis;    convolutional neuronal networks;    artificial intelligence;   
DOI  :  10.3390/app11041965
来源: DOAJ
【 摘 要 】

Despite the promising results obtained by deep learning methods in the field of medical image segmentation, lack of sufficient data always hinders performance to a certain degree. In this work, we explore the feasibility of applying deep learning methods on a pilot dataset. We present a simple and practical approach to perform segmentation in a 2D, slice-by-slice manner, based on region of interest (ROI) localization, applying an optimized training regime to improve segmentation performance from regions of interest. We start from two popular segmentation networks, the preferred model for medical segmentation, U-Net, and a general-purpose model, DeepLabV3+. Furthermore, we show that ensembling of these two fundamentally different architectures brings constant benefits by testing our approach on two different datasets, the publicly available ACDC challenge, and the imATFIB dataset from our in-house conducted clinical study. Results on the imATFIB dataset show that the proposed approach performs well with the provided training volumes, achieving an average Dice Similarity Coefficient of the whole heart of 89.89% on the validation set. Moreover, our algorithm achieved a mean Dice value of 91.87% on the ACDC validation, being comparable to the second best-performing approach on the challenge. Our approach provides an opportunity to serve as a building block of a computer-aided diagnostic system in a clinical setting.

【 授权许可】

Unknown   

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