'Aariz: A Benchmark Dataset for Automatic Cephalometric Landmark
Detection and CVM Stage Classification
- URL: http://arxiv.org/abs/2302.07797v1
- Date: Wed, 15 Feb 2023 17:31:56 GMT
- Title: 'Aariz: A Benchmark Dataset for Automatic Cephalometric Landmark
Detection and CVM Stage Classification
- Authors: Muhammad Anwaar Khalid, Kanwal Zulfiqar, Ulfat Bashir, Areeba Shaheen,
Rida Iqbal, Zarnab Rizwan, Ghina Rizwan, Muhammad Moazam Fraz
- Abstract summary: This dataset includes 1000 lateral cephalometric radiographs (LCRs) obtained from 7 different radiographic imaging devices with varying resolutions.
The clinical experts of our team meticulously annotated each radiograph with 29 cephalometric landmarks, including the most significant soft tissue landmarks ever marked in any publicly available dataset.
We believe that this dataset will be instrumental in the development of reliable automated landmark detection frameworks for use in orthodontics and beyond.
- Score: 0.402058998065435
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The accurate identification and precise localization of cephalometric
landmarks enable the classification and quantification of anatomical
abnormalities. The traditional way of marking cephalometric landmarks on
lateral cephalograms is a monotonous and time-consuming job. Endeavours to
develop automated landmark detection systems have persistently been made,
however, they are inadequate for orthodontic applications due to unavailability
of a reliable dataset. We proposed a new state-of-the-art dataset to facilitate
the development of robust AI solutions for quantitative morphometric analysis.
The dataset includes 1000 lateral cephalometric radiographs (LCRs) obtained
from 7 different radiographic imaging devices with varying resolutions, making
it the most diverse and comprehensive cephalometric dataset to date. The
clinical experts of our team meticulously annotated each radiograph with 29
cephalometric landmarks, including the most significant soft tissue landmarks
ever marked in any publicly available dataset. Additionally, our experts also
labelled the cervical vertebral maturation (CVM) stage of the patient in a
radiograph, making this dataset the first standard resource for CVM
classification. We believe that this dataset will be instrumental in the
development of reliable automated landmark detection frameworks for use in
orthodontics and beyond.
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