Literature DB >> 31528523

Asymmetric Loss Functions and Deep Densely Connected Networks for Highly Imbalanced Medical Image Segmentation: Application to Multiple Sclerosis Lesion Detection.

Seyed Raein Hashemi1,2, Seyed Sadegh Mohseni Salehi1,3, Deniz Erdogmus3, Sanjay P Prabhu1, Simon K Warfield1, Ali Gholipour1.   

Abstract

Fully convolutional deep neural networks have been asserted to be fast and precise frameworks with great potential in image segmentation. One of the major challenges in training such networks raises when data is unbalanced, which is common in many medical imaging applications such as lesion segmentation where lesion class voxels are often much lower in numbers than non-lesion voxels. A trained network with unbalanced data may make predictions with high precision and low recall, being severely biased towards the non-lesion class which is particularly undesired in most medical applications where false negatives are actually more important than false positives. Various methods have been proposed to address this problem including two step training, sample re-weighting, balanced sampling, and more recently similarity loss functions, and focal loss. In this work we trained fully convolutional deep neural networks using an asymmetric similarity loss function to mitigate the issue of data imbalance and achieve much better trade-off between precision and recall. To this end, we developed a 3D fully convolutional densely connected network (FC-DenseNet) with large overlapping image patches as input and an asymmetric similarity loss layer based on Tversky index (using F β scores). We used large overlapping image patches as inputs for intrinsic and extrinsic data augmentation, a patch selection algorithm, and a patch prediction fusion strategy using B-spline weighted soft voting to account for the uncertainty of prediction in patch borders. We applied this method to multiple sclerosis (MS) lesion segmentation based on two different datasets of MSSEG 2016 and ISBI longitudinal MS lesion segmentation challenge, where we achieved average Dice similarity coefficients of 69.9% and 65.74%, respectively, achieving top performance in both challenges. We compared the performance of our network trained with F β loss, focal loss, and generalized Dice loss (GDL) functions. Through September 2018 our network trained with focal loss ranked first according to the ISBI challenge overall score and resulted in the lowest reported lesion false positive rate among all submitted methods. Our network trained with the asymmetric similarity loss led to the lowest surface distance and the best lesion true positive rate that is arguably the most important performance metric in a clinical decision support system for lesion detection. The asymmetric similarity loss function based on F β scores allows training networks that make a better balance between precision and recall in highly unbalanced image segmentation. We achieved superior performance in MS lesion segmentation using a patchwise 3D FC-DenseNet with a patch prediction fusion strategy, trained with asymmetric similarity loss functions.

Entities:  

Keywords:  Asymmetric loss function; Convolutional neural network; Deep learning; FC-DenseNet; Focal loss; Fβ scores; Lesion segmentation; Multiple Sclerosis; Patch prediction fusion; Tversky index

Year:  2018        PMID: 31528523      PMCID: PMC6746414          DOI: 10.1109/ACCESS.2018.2886371

Source DB:  PubMed          Journal:  IEEE Access        ISSN: 2169-3536            Impact factor:   3.367


  15 in total

1.  Closing the Gap Between Deep Neural Network Modeling and Biomedical Decision-Making Metrics in Segmentation via Adaptive Loss Functions.

Authors:  Hyunseok Seo; Maxime Bassenne; Lei Xing
Journal:  IEEE Trans Med Imaging       Date:  2021-02-02       Impact factor: 10.048

Review 2.  Deep learning with noisy labels: Exploring techniques and remedies in medical image analysis.

Authors:  Davood Karimi; Haoran Dou; Simon K Warfield; Ali Gholipour
Journal:  Med Image Anal       Date:  2020-06-20       Impact factor: 8.545

3.  Diffusion-derived parameters in lesions, peri-lesion and normal-appearing white matter in multiple sclerosis using tensor, kurtosis and fixel-based analysis.

Authors:  Chris Wj van der Weijden; Anouk van der Hoorn; Jan Hendrik Potze; Remco J Renken; Ronald Jh Borra; Rudi Ajo Dierckx; Ingomar W Gutmann; Hakim Ouaalam; Davood Karimi; Ali Gholipour; Simon K Warfield; Erik Fj de Vries; Jan F Meilof
Journal:  J Cereb Blood Flow Metab       Date:  2022-06-25       Impact factor: 6.960

4.  Multiple Sclerosis Lesions Segmentation Using Attention-Based CNNs in FLAIR Images.

Authors:  Mehdi Sadeghibakhi; Hamidreza Pourreza; Hamidreza Mahyar
Journal:  IEEE J Transl Eng Health Med       Date:  2022-05-02

5.  Tuber Locations Associated with Infantile Spasms Map to a Common Brain Network.

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Journal:  Ann Neurol       Date:  2021-01-21       Impact factor: 10.422

6.  Multiple Sclerosis Lesion Segmentation with Tiramisu and 2.5D Stacked Slices.

Authors:  Huahong Zhang; Alessandra M Valcarcel; Rohit Bakshi; Renxin Chu; Francesca Bagnato; Russell T Shinohara; Kilian Hett; Ipek Oguz
Journal:  Med Image Comput Comput Assist Interv       Date:  2019-10-10

7.  Deep learning-based auto-delineation of gross tumour volumes and involved nodes in PET/CT images of head and neck cancer patients.

Authors:  Yngve Mardal Moe; Aurora Rosvoll Groendahl; Oliver Tomic; Einar Dale; Eirik Malinen; Cecilia Marie Futsaether
Journal:  Eur J Nucl Med Mol Imaging       Date:  2021-02-09       Impact factor: 9.236

8.  Multiple sclerosis cortical and WM lesion segmentation at 3T MRI: a deep learning method based on FLAIR and MP2RAGE.

Authors:  Francesco La Rosa; Ahmed Abdulkadir; Mário João Fartaria; Reza Rahmanzadeh; Po-Jui Lu; Riccardo Galbusera; Muhamed Barakovic; Jean-Philippe Thiran; Cristina Granziera; Merixtell Bach Cuadra
Journal:  Neuroimage Clin       Date:  2020-06-30       Impact factor: 4.881

9.  Investigating efficient CNN architecture for multiple sclerosis lesion segmentation.

Authors:  Alexandre Fenneteau; Pascal Bourdon; David Helbert; Christine Fernandez-Maloigne; Christophe Habas; Rémy Guillevin
Journal:  J Med Imaging (Bellingham)       Date:  2021-02-06

10.  Radius-optimized efficient template matching for lesion detection from brain images.

Authors:  Subhranil Koley; Pranab K Dutta; Iman Aganj
Journal:  Sci Rep       Date:  2021-06-02       Impact factor: 4.379

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