2014
DOI: 10.7554/elife.02020
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Diagnostically relevant facial gestalt information from ordinary photos

Abstract: Craniofacial characteristics are highly informative for clinical geneticists when diagnosing genetic diseases. As a first step towards the high-throughput diagnosis of ultra-rare developmental diseases we introduce an automatic approach that implements recent developments in computer vision. This algorithm extracts phenotypic information from ordinary non-clinical photographs and, using machine learning, models human facial dysmorphisms in a multidimensional 'Clinical Face Phenotype Space'. The space locates p… Show more

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Cited by 141 publications
(186 citation statements)
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“…We have not yet done a similar analysis with the other known genes, because the number of facial images is not sufficient and the typical face of the mutation-positive cases is not yet fully appreciated. Statistical approaches to the similarity of averaged faces are being developed and may ultimately replace the human gestalt assessment 34. The NIPBL -like group are clearly an interesting group on whom to focus future research, as they are likely to be enriched for mosaic cases.…”
Section: Discussionmentioning
confidence: 99%
“…We have not yet done a similar analysis with the other known genes, because the number of facial images is not sufficient and the typical face of the mutation-positive cases is not yet fully appreciated. Statistical approaches to the similarity of averaged faces are being developed and may ultimately replace the human gestalt assessment 34. The NIPBL -like group are clearly an interesting group on whom to focus future research, as they are likely to be enriched for mosaic cases.…”
Section: Discussionmentioning
confidence: 99%
“…Appearance based features include learned image filters from Independent component analysis (ICA), Principal Component Analysis (PCA), Local Feature Analysis (LFA), Gabor filters, Gabor wavelet transform (GWT) [13], Scale-Invariant Feature Transform (SIFT) [14], and Local Binary Patterns (LBP) [15] are the most popular ones. Experiments demonstrate that the fusion of geometric and appearance features can provide better accuracy than using either of them alone [2][8]. …”
Section: ) Holistic Featuresmentioning
confidence: 99%
“…Clinical geneticists and pediatricians are closely involved in the identification of the correspondent features. 1 in 17 people worldwide suffer from genetic disorder like Down Syndrome (DS), 22q11.2 Deletion Syndome (22q11.2DS), Cri-du-chat, Cornelia de Lange, fragile X, Mucopolysaccharidosis III, Noonan, Prader-Willi, Smith-Lemli-Opitz, Sotos, Williams-Beuren and Wolf-Hirschhorn syndrome [2]. There are about 7,000 known genetic disorders, 30 to 40% of cases cause a physical change showing abnormalities in the face and skull [3].…”
Section: Introductionmentioning
confidence: 99%
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“…They are not included in the traditional computer-assistance systems support diagnostic decisions. Movement in this direction can be seen in the English study [11], unites three approaches: (a) train a computer vision algorithm for automatic annotation of 36 feature points of interest across the face on foto, (b) the use of active probabilistic models of face dysmorphism within the nosological groups in a multidimensional space, (c) machine learning using the nearest neighbor method. Clusters of patients in the space known syndromes facilitate the generation of diagnostic hypotheses.…”
Section: Formulation Of the Problemmentioning
confidence: 99%