Characterization of discrepancies between manual and automatic segmentation to improve anatomical brain atlases
Abstract
Purpose: To characterize discrepancies between expert manually segmented brain images from
Hammers Atlas Database and automatically generated segmentations of the same
images; to decide whether they can be attributed to flaws in the automatic segmentation
or in the manual segmentation; and to determine general rules that enable these
decisions.
Theory: Image segmentation plays an important role in clinical neuroscience and experimental
medicine for extraction of information from medical images, and it is a fundamental
image processing step in medical image analysis. Another important image processing
step is image registration that enables quantitative comparison between datasets of
different subjects by geometrically aligning one dataset with another. The scientific
underpinning of the project is descriptive science combined with inductive reasoning.
Method: The study data consisted of 30 T1-weighted 3D MR images along with manual region
label volumes from Hammers Atlas Database, and automatically MAPER-generated
segmentations of the same images. The comparison of manual and automatic
anatomical (semantic) segmentations involves quantitative and qualitative analyses.
Image registration was performed with MIRTK to normalize all images into a common
space. Discrepancies were then extracted using a custom-designed image analysis
process by the program Convert3D.
Result:
Conclusion:
The work has resulted in a model that enables extraction of discrepancies between
manual and automatic segmentation into an individual component for quantitative
characterization on a per-label basis. A total of 706 465 surface discrepancies were
labelled while 1009 holes were found in both manual and automatic segmentations.
Probability maps of the discrepancies have been created and can be used as a basis for
determining the probability that certain discrepant voxels have been segmented
correctly or not.
The study yielded insights into how differences between manual and automatic
segmentations arise, and how these can be used to develop an improved segmentation
that incorporates information from both models.
Degree
Student essay
Collections
View/ Open
Date
2021-05-10Author
Sörensson, Anna
Keywords
Medical physics
Anatomical brain atlas
Image segmentation
Image registration
Language
eng