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ADS_UNet: A Nested UNet for Histopathology Image Segmentation

ADS_UNet: A Nested UNet for Histopathology Image Segmentation
ADS_UNet: A Nested UNet for Histopathology Image Segmentation

The UNet model consists of fully convolutional network (FCN) layers arranged as contracting encoder and upsampling decoder maps. Nested arrangements of these encoder and decoder maps give rise to extensions of the UNet model, such as UNete and UNet++. Other refinements include constraining the outputs of the convolutional layers to discriminate between segment labels when trained end to end, a property called deep supervision. This reduces feature diversity in these nested UNet models despite their large parameter space. Furthermore, for texture segmentation, pixel correlations at multiple scales contribute to the classification task; hence, explicit deep supervision of shallower layers is likely to enhance performance. In this paper, we propose ADS_UNet, a stage-wise additive training algorithm that incorporates resource-efficient deep supervision in shallower layers and takes performance-weighted combinations of the sub-UNets to create the segmentation model. We provide empirical evidence on three histopathology datasets to support the claim that the proposed ADS_UNet reduces correlations between constituent features and improves performance while being more resource efficient. We demonstrate that ADS_UNet outperforms state-of-the-art Transformer-based models by 1.08 and 0.6 points on CRAG and BCSS datasets, and yet requires only 37% of GPU consumption and 34% of training time as that required by Transformers. The source code is available at:.

Adaboost, Histopatology, UNet, ensemble, mahmoodi, sasan, segmentation, AdaBoost, Histopathology, Segmentation, Ensemble
0957-4174
Yang, Yilong
a0d162d2-c118-40be-b724-d2e03bffc026
Dasmahapatra, Srinandan
eb5fd76f-4335-4ae9-a88a-20b9e2b3f698
Mahmoodi, Sasan
91ca8da4-95dc-4c1e-ac0e-f2c08d6ac7cf
Yang, Yilong
a0d162d2-c118-40be-b724-d2e03bffc026
Dasmahapatra, Srinandan
eb5fd76f-4335-4ae9-a88a-20b9e2b3f698
Mahmoodi, Sasan
91ca8da4-95dc-4c1e-ac0e-f2c08d6ac7cf

Yang, Yilong, Dasmahapatra, Srinandan and Mahmoodi, Sasan (2023) ADS_UNet: A Nested UNet for Histopathology Image Segmentation. Expert Systems with Applications, 226, [120128]. (doi:10.1016/j.eswa.2023.120128).

Record type: Article

Abstract

The UNet model consists of fully convolutional network (FCN) layers arranged as contracting encoder and upsampling decoder maps. Nested arrangements of these encoder and decoder maps give rise to extensions of the UNet model, such as UNete and UNet++. Other refinements include constraining the outputs of the convolutional layers to discriminate between segment labels when trained end to end, a property called deep supervision. This reduces feature diversity in these nested UNet models despite their large parameter space. Furthermore, for texture segmentation, pixel correlations at multiple scales contribute to the classification task; hence, explicit deep supervision of shallower layers is likely to enhance performance. In this paper, we propose ADS_UNet, a stage-wise additive training algorithm that incorporates resource-efficient deep supervision in shallower layers and takes performance-weighted combinations of the sub-UNets to create the segmentation model. We provide empirical evidence on three histopathology datasets to support the claim that the proposed ADS_UNet reduces correlations between constituent features and improves performance while being more resource efficient. We demonstrate that ADS_UNet outperforms state-of-the-art Transformer-based models by 1.08 and 0.6 points on CRAG and BCSS datasets, and yet requires only 37% of GPU consumption and 34% of training time as that required by Transformers. The source code is available at:.

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ESWA_Manuscript_V2_17_Mar_2023_Yilong - Accepted Manuscript
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Accepted/In Press date: 10 April 2023
Published date: 15 September 2023
Additional Information: Funding Information: The authors acknowledge the use of the IRIDIS High-Performance Computing Facility, and associated support services at the University of Southampton, in the completion of this work. Yilong Yang is supported by China Scholarship Council under Grant No. 201906310150. Funding Information: The authors acknowledge the use of the IRIDIS High-Performance Computing Facility, and associated support services at the University of Southampton, in the completion of this work. Yilong Yang is supported by China Scholarship Council under Grant No. 201906310150 . Publisher Copyright: © 2023 Elsevier Ltd
Keywords: Adaboost, Histopatology, UNet, ensemble, mahmoodi, sasan, segmentation, AdaBoost, Histopathology, Segmentation, Ensemble

Identifiers

Local EPrints ID: 476698
URI: http://eprints.soton.ac.uk/id/eprint/476698
ISSN: 0957-4174
PURE UUID: d899460e-0cd4-4d1f-bdff-fee117b3a0f2

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Date deposited: 11 May 2023 16:46
Last modified: 10 Apr 2024 04:07

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Contributors

Author: Yilong Yang
Author: Srinandan Dasmahapatra
Author: Sasan Mahmoodi

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