VERIDAH: Solving Enumeration Anomaly Aware Vertebra Labeling across Imaging Sequences
Hendrik M\"oller, Hanna Schoen, Robert Graf, Matan Atad, Nathan Molinier, Anjany Sekuboyina, Bettina K. Budai, Fabian Bamberg, Steffen Ringhof, Christopher Schlett, Tobias Pischon, Thoralf Niendorf, Josua A. Decker, Marc-Andr\'e Weber, Bjoern Menze, Daniel Rueckert

TL;DR
VERIDAH is a novel deep learning algorithm that accurately labels vertebrae and detects enumeration anomalies across different imaging modalities, improving clinical assessment of spinal irregularities.
Contribution
Introduces VERIDAH, a new vertebra labeling method that handles enumeration anomalies using multiple classification heads and sequence prediction, outperforming existing models.
Findings
Achieves 98.30% accuracy on sagittal images
Detects thoracic anomalies with 87.80% accuracy
Works effectively on arbitrary field-of-view images
Abstract
The human spine commonly consists of seven cervical, twelve thoracic, and five lumbar vertebrae. However, enumeration anomalies may result in individuals having eleven or thirteen thoracic vertebrae and four or six lumbar vertebrae. Although the identification of enumeration anomalies has potential clinical implications for chronic back pain and operation planning, the thoracolumbar junction is often poorly assessed and rarely described in clinical reports. Additionally, even though multiple deep-learning-based vertebra labeling algorithms exist, there is a lack of methods to automatically label enumeration anomalies. Our work closes that gap by introducing "Vertebra Identification with Anomaly Handling" (VERIDAH), a novel vertebra labeling algorithm based on multiple classification heads combined with a weighted vertebra sequence prediction algorithm. We show that our approach…
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Taxonomy
TopicsMedical Imaging and Analysis · Forensic Anthropology and Bioarchaeology Studies · Medical Image Segmentation Techniques
