Does image resolution impact chest X-ray based fine-grained
Tuberculosis-consistent lesion segmentation?
- URL: http://arxiv.org/abs/2301.04032v1
- Date: Tue, 10 Jan 2023 15:34:39 GMT
- Title: Does image resolution impact chest X-ray based fine-grained
Tuberculosis-consistent lesion segmentation?
- Authors: Sivaramakrishnan Rajaraman, Feng Yang, Ghada Zamzmi, Zhiyun Xue,
Sameer Antani
- Abstract summary: Deep learning models are reportedly trained on reduced image resolutions citing reasons for the lack of computational resources.
This study investigated performance gains achieved through training an Inception-V3-based UNet model using various image/mask resolutions.
- Score: 3.3086274755158325
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning (DL) models are becoming state-of-the-art in segmenting
anatomical and disease regions of interest (ROIs) in medical images,
particularly chest X-rays (CXRs). However, these models are reportedly trained
on reduced image resolutions citing reasons for the lack of computational
resources. Literature is sparse considering identifying the optimal image
resolution to train these models for the task under study, particularly
considering segmentation of Tuberculosis (TB)-consistent lesions in CXRs. In
this study, we used the (i) Shenzhen TB CXR dataset, investigated performance
gains achieved through training an Inception-V3-based UNet model using various
image/mask resolutions with/without lung ROI cropping and aspect ratio
adjustments, and (ii) identified the optimal image resolution through extensive
empirical evaluations to improve TB-consistent lesion segmentation performance.
We proposed a combinatorial approach consisting of storing model snapshots,
optimizing test-time augmentation (TTA) methods, and selecting the optimal
segmentation threshold to further improve performance at the optimal
resolution. We emphasize that (i) higher image resolutions are not always
necessary and (ii) identifying the optimal image resolution is indispensable to
achieve superior performance for the task under study.
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