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Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification

Amelogenesis imperfecta (AI) is a heterogeneous group of genetic rare diseases disrupting enamel development (Smith et al., Front Physiol, 2017a, 8, 333). The clinical enamel phenotypes can be described as hypoplastic, hypomineralized or hypomature and serve as a basis, together with the mode of inh...

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Autores principales: Bloch-Zupan, Agnes, Rey, Tristan, Jimenez-Armijo, Alexandra, Kawczynski, Marzena, Kharouf, Naji, Dure-Molla, Muriel de La, Noirrit, Emmanuelle, Hernandez, Magali, Joseph-Beaudin, Clara, Lopez, Serena, Tardieu, Corinne, Thivichon-Prince, Béatrice, Dostalova, Tatjana, Macek, Milan, Alloussi, Mustapha El, Qebibo, Leila, Morkmued, Supawich, Pungchanchaikul, Patimaporn, Orellana, Blanca Urzúa, Manière, Marie-Cécile, Gérard, Bénédicte, Bugueno, Isaac Maximiliano, Laugel-Haushalter, Virginie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10205041/
https://www.ncbi.nlm.nih.gov/pubmed/37228816
http://dx.doi.org/10.3389/fphys.2023.1130175
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author Bloch-Zupan, Agnes
Rey, Tristan
Jimenez-Armijo, Alexandra
Kawczynski, Marzena
Kharouf, Naji
Dure-Molla, Muriel de La
Noirrit, Emmanuelle
Hernandez, Magali
Joseph-Beaudin, Clara
Lopez, Serena
Tardieu, Corinne
Thivichon-Prince, Béatrice
Dostalova, Tatjana
Macek, Milan
Alloussi, Mustapha El
Qebibo, Leila
Morkmued, Supawich
Pungchanchaikul, Patimaporn
Orellana, Blanca Urzúa
Manière, Marie-Cécile
Gérard, Bénédicte
Bugueno, Isaac Maximiliano
Laugel-Haushalter, Virginie
author_facet Bloch-Zupan, Agnes
Rey, Tristan
Jimenez-Armijo, Alexandra
Kawczynski, Marzena
Kharouf, Naji
Dure-Molla, Muriel de La
Noirrit, Emmanuelle
Hernandez, Magali
Joseph-Beaudin, Clara
Lopez, Serena
Tardieu, Corinne
Thivichon-Prince, Béatrice
Dostalova, Tatjana
Macek, Milan
Alloussi, Mustapha El
Qebibo, Leila
Morkmued, Supawich
Pungchanchaikul, Patimaporn
Orellana, Blanca Urzúa
Manière, Marie-Cécile
Gérard, Bénédicte
Bugueno, Isaac Maximiliano
Laugel-Haushalter, Virginie
author_sort Bloch-Zupan, Agnes
collection PubMed
description Amelogenesis imperfecta (AI) is a heterogeneous group of genetic rare diseases disrupting enamel development (Smith et al., Front Physiol, 2017a, 8, 333). The clinical enamel phenotypes can be described as hypoplastic, hypomineralized or hypomature and serve as a basis, together with the mode of inheritance, to Witkop’s classification (Witkop, J Oral Pathol, 1988, 17, 547–553). AI can be described in isolation or associated with others symptoms in syndromes. Its occurrence was estimated to range from 1/700 to 1/14,000. More than 70 genes have currently been identified as causative. Objectives: We analyzed using next-generation sequencing (NGS) a heterogeneous cohort of AI patients in order to determine the molecular etiology of AI and to improve diagnosis and disease management. Methods: Individuals presenting with so called “isolated” or syndromic AI were enrolled and examined at the Reference Centre for Rare Oral and Dental Diseases (O-Rares) using D4/phenodent protocol (www.phenodent.org). Families gave written informed consents for both phenotyping and molecular analysis and diagnosis using a dedicated NGS panel named GenoDENT. This panel explores currently simultaneously 567 genes. The study is registered under NCT01746121 and NCT02397824 (https://clinicaltrials.gov/). Results: GenoDENT obtained a 60% diagnostic rate. We reported genetics results for 221 persons divided between 115 AI index cases and their 106 associated relatives from a total of 111 families. From this index cohort, 73% were diagnosed with non-syndromic amelogenesis imperfecta and 27% with syndromic amelogenesis imperfecta. Each individual was classified according to the AI phenotype. Type I hypoplastic AI represented 61 individuals (53%), Type II hypomature AI affected 31 individuals (27%), Type III hypomineralized AI was diagnosed in 18 individuals (16%) and Type IV hypoplastic-hypomature AI with taurodontism concerned 5 individuals (4%). We validated the genetic diagnosis, with class 4 (likely pathogenic) or class 5 (pathogenic) variants, for 81% of the cohort, and identified candidate variants (variant of uncertain significance or VUS) for 19% of index cases. Among the 151 sequenced variants, 47 are newly reported and classified as class 4 or 5. The most frequently discovered genotypes were associated with MMP20 and FAM83H for isolated AI. FAM20A and LTBP3 genes were the most frequent genes identified for syndromic AI. Patients negative to the panel were resolved with exome sequencing elucidating for example the gene involved ie ACP4 or digenic inheritance. Conclusion: NGS GenoDENT panel is a validated and cost-efficient technique offering new perspectives to understand underlying molecular mechanisms of AI. Discovering variants in genes involved in syndromic AI (CNNM4, WDR72, FAM20A … ) transformed patient overall care. Unravelling the genetic basis of AI sheds light on Witkop’s AI classification.
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spelling pubmed-102050412023-05-24 Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification Bloch-Zupan, Agnes Rey, Tristan Jimenez-Armijo, Alexandra Kawczynski, Marzena Kharouf, Naji Dure-Molla, Muriel de La Noirrit, Emmanuelle Hernandez, Magali Joseph-Beaudin, Clara Lopez, Serena Tardieu, Corinne Thivichon-Prince, Béatrice Dostalova, Tatjana Macek, Milan Alloussi, Mustapha El Qebibo, Leila Morkmued, Supawich Pungchanchaikul, Patimaporn Orellana, Blanca Urzúa Manière, Marie-Cécile Gérard, Bénédicte Bugueno, Isaac Maximiliano Laugel-Haushalter, Virginie Front Physiol Physiology Amelogenesis imperfecta (AI) is a heterogeneous group of genetic rare diseases disrupting enamel development (Smith et al., Front Physiol, 2017a, 8, 333). The clinical enamel phenotypes can be described as hypoplastic, hypomineralized or hypomature and serve as a basis, together with the mode of inheritance, to Witkop’s classification (Witkop, J Oral Pathol, 1988, 17, 547–553). AI can be described in isolation or associated with others symptoms in syndromes. Its occurrence was estimated to range from 1/700 to 1/14,000. More than 70 genes have currently been identified as causative. Objectives: We analyzed using next-generation sequencing (NGS) a heterogeneous cohort of AI patients in order to determine the molecular etiology of AI and to improve diagnosis and disease management. Methods: Individuals presenting with so called “isolated” or syndromic AI were enrolled and examined at the Reference Centre for Rare Oral and Dental Diseases (O-Rares) using D4/phenodent protocol (www.phenodent.org). Families gave written informed consents for both phenotyping and molecular analysis and diagnosis using a dedicated NGS panel named GenoDENT. This panel explores currently simultaneously 567 genes. The study is registered under NCT01746121 and NCT02397824 (https://clinicaltrials.gov/). Results: GenoDENT obtained a 60% diagnostic rate. We reported genetics results for 221 persons divided between 115 AI index cases and their 106 associated relatives from a total of 111 families. From this index cohort, 73% were diagnosed with non-syndromic amelogenesis imperfecta and 27% with syndromic amelogenesis imperfecta. Each individual was classified according to the AI phenotype. Type I hypoplastic AI represented 61 individuals (53%), Type II hypomature AI affected 31 individuals (27%), Type III hypomineralized AI was diagnosed in 18 individuals (16%) and Type IV hypoplastic-hypomature AI with taurodontism concerned 5 individuals (4%). We validated the genetic diagnosis, with class 4 (likely pathogenic) or class 5 (pathogenic) variants, for 81% of the cohort, and identified candidate variants (variant of uncertain significance or VUS) for 19% of index cases. Among the 151 sequenced variants, 47 are newly reported and classified as class 4 or 5. The most frequently discovered genotypes were associated with MMP20 and FAM83H for isolated AI. FAM20A and LTBP3 genes were the most frequent genes identified for syndromic AI. Patients negative to the panel were resolved with exome sequencing elucidating for example the gene involved ie ACP4 or digenic inheritance. Conclusion: NGS GenoDENT panel is a validated and cost-efficient technique offering new perspectives to understand underlying molecular mechanisms of AI. Discovering variants in genes involved in syndromic AI (CNNM4, WDR72, FAM20A … ) transformed patient overall care. Unravelling the genetic basis of AI sheds light on Witkop’s AI classification. Frontiers Media S.A. 2023-05-09 /pmc/articles/PMC10205041/ /pubmed/37228816 http://dx.doi.org/10.3389/fphys.2023.1130175 Text en Copyright © 2023 Bloch-Zupan, Rey, Jimenez-Armijo, Kawczynski, Kharouf, O-Rare consortium, Dure-Molla, Noirrit, Hernandez, Joseph-Beaudin, Lopez, Tardieu, Thivichon-Prince, ERN Cranio Consortium, Dostalova, Macek, International Consortium, Alloussi, Qebibo, Morkmued, Pungchanchaikul, Orellana, Manière, Gérard, Bugueno and Laugel-Haushalter. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Physiology
Bloch-Zupan, Agnes
Rey, Tristan
Jimenez-Armijo, Alexandra
Kawczynski, Marzena
Kharouf, Naji
Dure-Molla, Muriel de La
Noirrit, Emmanuelle
Hernandez, Magali
Joseph-Beaudin, Clara
Lopez, Serena
Tardieu, Corinne
Thivichon-Prince, Béatrice
Dostalova, Tatjana
Macek, Milan
Alloussi, Mustapha El
Qebibo, Leila
Morkmued, Supawich
Pungchanchaikul, Patimaporn
Orellana, Blanca Urzúa
Manière, Marie-Cécile
Gérard, Bénédicte
Bugueno, Isaac Maximiliano
Laugel-Haushalter, Virginie
Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification
title Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification
title_full Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification
title_fullStr Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification
title_full_unstemmed Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification
title_short Amelogenesis imperfecta: Next-generation sequencing sheds light on Witkop’s classification
title_sort amelogenesis imperfecta: next-generation sequencing sheds light on witkop’s classification
topic Physiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10205041/
https://www.ncbi.nlm.nih.gov/pubmed/37228816
http://dx.doi.org/10.3389/fphys.2023.1130175
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