Learning to Rank the Severity of Unrepaired Cleft Lip Nasal Deformity on 3D Mesh Data.

ICPR(2014)

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摘要
Cleft lip is a birth defect that results in deformity of the upper lip and nose. Its severity is widely variable and the results of treatment are influenced by the initial deformity. Objective assessment of severity would help to guide prognosis and treatment. However, most assessments are subjective. The purpose of this study is to develop and test quantitative computer-based methods of measuring cleft lip severity. In this paper, a grid-patch based measurement of symmetry is introduced, with which a computer program learns to rank the severity of cleft lip on 3D meshes of human infant faces. Three computer-based methods to define the midfacial reference plane were compared to two manual methods. Four different symmetry features were calculated based upon these reference planes, and evaluated. The result shows that the rankings predicted by the proposed features were highly correlated with the ranking orders provided by experts that were used as the ground truth.
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关键词
3d shape quantification,paediatrics,3d mesh data,nose,human infant faces,unrepaired cleft lip nasal deformity,learning to rank, 3d shape quantification, cleft lip, face symmetry,birth defect,computer program learning,cleft lip,computer-based methods,upper lip,symmetry features,midfacial reference plane,quantitative computer-based methods,medical computing,face symmetry,patient prognosis,learning to rank,biological organs,support vector machines,patient treatment,grid-patch based measurement,biomedical research,bioinformatics
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