Abstract

Pretreatment risk stratification is key for personalized medicine. While many physicians rely on an “eyeball test” to assess whether patients will tolerate major surgery or chemotherapy, “eyeballing” is inherently subjective and difficult to quantify. The concept of morphometric age derived from cross-sectional imaging has been found to correlate well with outcomes such as length of stay, morbidity, and mortality. However, the determination of the morphometric age is time intensive and requires highly trained experts. In this study, we propose a fully automated deep learning system for the segmentation of skeletal muscle cross-sectional area (CSA) on an axial computed tomography image taken at the third lumbar vertebra. We utilized a fully automated deep segmentation model derived from an extended implementation of a fully convolutional network with weight initialization of an ImageNet pre-trained model, followed by post processing to eliminate intramuscular fat for a more accurate analysis. This experiment was conducted by varying window level (WL), window width (WW), and bit resolutions in order to better understand the effects of the parameters on the model performance. Our best model, fine-tuned on 250 training images and ground truth labels, achieves 0.93 ± 0.02 Dice similarity coefficient (DSC) and 3.68 ± 2.29% difference between predicted and ground truth muscle CSA on 150 held-out test cases. Ultimately, the fully automated segmentation system can be embedded into the clinical environment to accelerate the quantification of muscle and expanded to volume analysis of 3D datasets.

Highlights

  • Image segmentation, known as pixel-level classification, is the process of partitioning all pixels in an image into a finite number of semantically non-overlapping segments

  • There is a role for automated tissue segmentation in order to bring body composition analysis into clinical practice

  • Performance increased as the number of features of different layers was fused

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Summary

Introduction

Known as pixel-level classification, is the process of partitioning all pixels in an image into a finite number of semantically non-overlapping segments. Cadaver studies have established muscle cross-sectional area (CSA) at the level of the third lumbar (L3) vertebral body as a surrogate marker for lean body muscle mass [11, 12]. These studies applied semi-automated threshold-based segmentation with pre-defined Hounsfield unit (HU) ranges to separate lean muscle mass from fat. There is a role for automated tissue segmentation in order to bring body composition analysis into clinical practice

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