48 research outputs found
A Classification-Based Adaptive Segmentation Pipeline: Feasibility Study Using Polycystic Liver Disease and Metastases from Colorectal Cancer CT Images
Automated segmentation tools often encounter accuracy and adaptability issues
when applied to images of different pathology. The purpose of this study is to
explore the feasibility of building a workflow to efficiently route images to
specifically trained segmentation models. By implementing a deep learning
classifier to automatically classify the images and route them to appropriate
segmentation models, we hope that our workflow can segment the images with
different pathology accurately. The data we used in this study are 350 CT
images from patients affected by polycystic liver disease and 350 CT images
from patients presenting with liver metastases from colorectal cancer. All
images had the liver manually segmented by trained imaging analysts. Our
proposed adaptive segmentation workflow achieved a statistically significant
improvement for the task of total liver segmentation compared to the generic
single segmentation model (non-parametric Wilcoxon signed rank test, n=100,
p-value << 0.001). This approach is applicable in a wide range of scenarios and
should prove useful in clinical implementations of segmentation pipelines.Comment: J Digit Imaging. Inform. med. (2024