On the Evaluation and Validation of Off-the-shelf Statistical Shape Modeling Tools: A Clinical Application
Anupama Goparaju, Ibolya Csecs, Alan Morris, Evgueni Kholmovski,, Nassir Marrouche, Ross Whitaker, and Shireen Elhabian

TL;DR
This study systematically evaluates popular statistical shape modeling tools for clinical application in designing and selecting anatomical closure devices, highlighting differences in measurement consistency and variability capture.
Contribution
It provides a comparative validation of ShapeWorks, SPHARM-PDM, and Deformetrica for clinical shape analysis, informing better tool selection for medical device design.
Findings
ShapeWorks provides more consistent measurements.
ShapeWorks and Deformetrica better capture population variability.
SPHARM-PDM shows less measurement consistency.
Abstract
Statistical shape modeling (SSM) has proven useful in many areas of biology and medicine as a new generation of morphometric approaches for the quantitative analysis of anatomical shapes. Recently, the increased availability of high-resolution in vivo images of anatomy has led to the development and distribution of open-source computational tools to model anatomical shapes and their variability within populations with unprecedented detail and statistical power. Nonetheless, there is little work on the evaluation and validation of such tools as related to clinical applications that rely on morphometric quantifications for treatment planning. To address this lack of validation, we systematically assess the outcome of widely used off-the-shelf SSM tools, namely ShapeWorks, SPHARM-PDM, and Deformetrica, in the context of designing closure devices for left atrium appendage (LAA) in atrial…
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