variants interpretation

  • 文章类型: Journal Article
    背景:尽管已经为标准化变体的解释做出了努力,在某些情况下,它们的致病性仍然模糊和令人困惑,有时它们的解释并不能帮助临床医生使用基因检测结果建立临床相关性。这项研究旨在为这些具有挑战性的变种提供更多的启示。
    方法:在临床环境中,根据美国医学遗传学和基因组学学会指南对先天性异常患者的81阵列CGH和79个全外显子组测序(WES)中发现的变异进行了解释.
    结果:在这项研究中,对由WES检测到的致病变异体和具有不确定临床意义的变异体的解释远比由阵列CGH检测到的变异体更具挑战性.存在未报告的临床症状,不完整的外显率,可变的表现力,父母不愿分析家庭中的种族隔离,以及产前检查的局限性,是本研究中解释变体的挑战性因素之一。
    结论:对遗传的谱系和疾病模式进行仔细研究,以及在常染色体显性遗传的疾病中对携带者父母进行仔细的临床检查,是确定变异的临床意义的主要策略之一。需要继续努力减轻这些挑战,以改进对变体的解释。
    BACKGROUND: Despite the efforts that have been made to standardize the interpretation of variants, in some cases, their pathogenicity remains vague and confusing, and sometimes their interpretation does not help clinicians to establish clinical correlation using genetic test results. This study aims to shed more lights on these challenging variants.
    METHODS: In a clinical setting, the variants found from 81 array CGH and 79 whole exome sequencing (WES) in patients with congenital anomalies were interpreted based on American College of Medical Genetics and Genomics guidelines.
    RESULTS: In this study, the interpretation of the disease-causing variants and the variants with uncertain clinical significance detected by WES was far more challenging than the variants detected by array CGH. The presence of unreported clinical symptoms, incomplete penetrance, variable expressivity, parents\' reluctance to analyze segregation in the family, and the limitations of prenatal tests, were among the challenging factors in the interpretation of variants in this study.
    CONCLUSIONS: A careful study of the pedigree and disease mode of inheritance, as well as a careful clinical examination of the carrier parents in diseases with autosomal dominant inheritance, are among the primary strategies for determining the clinical significance of the variants. Continued efforts to mitigate these challenges are needed to improve the interpretation of variants.
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  • 文章类型: Preprint
    在基因组解释的批判性评估的背景下,第6版(CAGI6),帕多瓦的神经发育障碍遗传学实验室提出了一项新的ID挑战,以提供开发预测患者表型和因果变异的计算方法的机会。八个研究小组和30个模型可以获得表型细节和真实的遗传数据,基于415名受神经发育障碍(NDD)影响的儿科患者的74个基因(VCF格式)的序列。NDD是临床和遗传异质性的疾病,发病在婴儿年龄。在这项研究中,我们根据每位患者的临床特征和因果变异来评估计算方法预测合并症表型的能力和准确性。最后,我们要求开发一种方法,为没有基因诊断的患者寻找新的可能的遗传原因。正如已经对CAGI5所做的那样,七个临床特征(ID,ASD,共济失调,癫痫,小头畸形,大头畸形,低张力),和变体(因果关系,提供了推定的致病因素和促成因素)。考虑到我们队列的整体临床表现,我们给出了来自CAGI5ID-Challenge的150名患者的变异数据和表型特征,作为预测方法开发的训练和验证。
    In the context of the Critical Assessment of the Genome Interpretation, 6th edition (CAGI6), the Genetics of Neurodevelopmental Disorders Lab in Padua proposed a new ID-challenge to give the opportunity of developing computational methods for predicting patient\'s phenotype and the causal variants. Eight research teams and 30 models had access to the phenotype details and real genetic data, based on the sequences of 74 genes (VCF format) in 415 pediatric patients affected by Neurodevelopmental Disorders (NDDs). NDDs are clinically and genetically heterogeneous conditions, with onset in infant age. In this study we evaluate the ability and accuracy of computational methods to predict comorbid phenotypes based on clinical features described in each patient and causal variants. Finally, we asked to develop a method to find new possible genetic causes for patients without a genetic diagnosis. As already done for the CAGI5, seven clinical features (ID, ASD, ataxia, epilepsy, microcephaly, macrocephaly, hypotonia), and variants (causative, putative pathogenic and contributing factors) were provided. Considering the overall clinical manifestation of our cohort, we give out the variant data and phenotypic traits of the 150 patients from CAGI5 ID-Challenge as training and validation for the prediction methods development.
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  • 文章类型: Journal Article
    背景:预测遗传变异在人类疾病中的功能后果或临床影响仍然是一个重要的挑战,比如癌症。在COSMIC等公共数据库中发现并记录了越来越多的癌症遗传变异,但其中绝大多数没有功能或临床注释。一些数据库,例如CIVIC可以手动注释功能突变,但是由于使用人工注释,数据库的大小很小。由于未标记的数据(数百万个变体)通常超过标记的数据(数千个变体),利用未标记数据的计算工具可以提高预测准确性。
    结果:为了利用未标记的数据来预测遗传变异的功能重要性,我们介绍了一种使用半监督生成对抗网络(SGAN)的方法,合并来自标记和未标记数据的特征。我们的SGAN模型结合了来自临床指南的特征和来自其他计算工具的预测评分。我们还进行了比较分析,研究了影响预测精度的因素,比如使用不同的算法,特征的类型,和训练样本大小,提供对变体优先级的更多见解。我们发现SGAN可以通过纳入未标记的样本,用小的标记训练样本来实现竞争表现,与传统的机器学习方法相比,这是一个独特的优势。我们还发现,与公开可用的数据集相比,手动筛选的样本可以实现更稳定的预测性能。
    结论:通过合并更大的未标记数据样本,SGAN方法可以提高检测新的致癌变体的能力,与仅使用标记数据集的其他机器学习算法相比。SGAN可以潜在地用于预测更复杂的变异如结构变异或非编码变异的致病性,具有更多训练样本和信息丰富的功能。
    BACKGROUND: It remains an important challenge to predict the functional consequences or clinical impacts of genetic variants in human diseases, such as cancer. An increasing number of genetic variants in cancer have been discovered and documented in public databases such as COSMIC, but the vast majority of them have no functional or clinical annotations. Some databases, such as CiVIC are available with manual annotation of functional mutations, but the size of the database is small due to the use of human annotation. Since the unlabeled data (millions of variants) typically outnumber labeled data (thousands of variants), computational tools that take advantage of unlabeled data may improve prediction accuracy.
    RESULTS: To leverage unlabeled data to predict functional importance of genetic variants, we introduced a method using semi-supervised generative adversarial networks (SGAN), incorporating features from both labeled and unlabeled data. Our SGAN model incorporated features from clinical guidelines and predictive scores from other computational tools. We also performed comparative analysis to study factors that influence prediction accuracy, such as using different algorithms, types of features, and training sample size, to provide more insights into variant prioritization. We found that SGAN can achieve competitive performances with small labeled training samples by incorporating unlabeled samples, which is a unique advantage compared to traditional machine learning methods. We also found that manually curated samples can achieve a more stable predictive performance than publicly available datasets.
    CONCLUSIONS: By incorporating much larger samples of unlabeled data, the SGAN method can improve the ability to detect novel oncogenic variants, compared to other machine-learning algorithms that use only labeled datasets. SGAN can be potentially used to predict the pathogenicity of more complex variants such as structural variants or non-coding variants, with the availability of more training samples and informative features.
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  • 文章类型: Journal Article
    BACKGROUND: At least 10% of adults and most of the children who receive renal replacement therapy have inherited kidney diseases. These disorders substantially decrease their life quality and have a large effect on the health-care system. Multisystem complications, with typical challenges for rare disorders, including variable phenotypes and fragmented clinical and biological data, make genetic diagnosis of inherited kidney disorders difficult. In current clinical practice, genetic diagnosis is important for clinical management, estimating disease development, and applying personal treatment for patients.
    CONCLUSIONS: Inherited kidney diseases comprise hundreds of different disorders. Here, we have summarized various monogenic kidney disorders. These disorders are caused by mutations in genes coding for a wide range of proteins including receptors, channels/transporters, enzymes, transcription factors, and structural components that might also have a role in extrarenal organs (bone, eyes, brain, skin, ear, etc.). With the development of next-generation sequencing technologies, genetic testing and analysis become more accessible, promoting our understanding of the pathophysiologic mechanisms of inherited kidney diseases. However, challenges exist in interpreting the significance of genetic variants and translating them to guide clinical managements. Alport syndrome is chosen as an example to introduce the practical application of genetic testing and diagnosis on inherited kidney diseases, considering its clinical features, genetic backgrounds, and genetic testing for making a genetic diagnosis.
    CONCLUSIONS: Recent advances in genomics have highlighted the complexity of Mendelian disorders, which is due to allelic heterogeneity (distinct mutations in the same gene produce distinct phenotypes), locus heterogeneity (mutations in distinct genes result in similar phenotypes), reduced penetrance, variable expressivity, modifier genes, and/or environmental factors. Implementation of precision medicine in clinical nephrology can improve the clinical diagnostic rate and treatment efficiency of kidney diseases, which requires a good understanding of genetics for nephrologists.
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    文章类型: Journal Article
    下一代测序(NGS)在临床实验室中的快速发展和广泛使用使几种遗传性疾病的遗传诊断取得了令人难以置信的进展。然而,新技术带来了新的挑战。在这篇综述中,我们考虑了NGS数据分析的重要问题,以及未知遗传变异的解释和附带发现的管理。此外,我们将注意力集中在生物信息学的新专业人物和医学遗传学家在患者临床管理中的新角色上。此外,我们考虑NGS的一些主要临床应用,考虑到在即将到来的未来,这一领域将取得越来越大的进展。
    The rapid evolution and widespread use of next generation sequencing (NGS) in clinical laboratories has allowed an incredible progress in the genetic diagnostics of several inherited disorders. However, the new technologies have brought new challenges. In this review we consider the important issue of NGS data analysis, as well as the interpretation of unknown genetic variants and the management of the incidental findings. Moreover, we focus the attention on the new professional figure of bioinformatics and the new role of medical geneticists in clinical management of patients. Furthermore, we consider some of the main clinical applications of NGS, taking into consideration that there will be a growing progress in this field in the forthcoming future.
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  • 文章类型: Journal Article
    Cystic Fibrosis is among the first diseases to have general population genetic screening tests and one of the most common indications of prenatal and preimplantation genetic diagnosis for single gene disorders. During the past twenty years, thanks to the evolution of diagnostic techniques, our knowledge of CFTR genetics and pathophysiological mechanisms involved in cystic fibrosis has significantly improved. Areas covered: Sanger sequencing and quantitative methods greatly contributed to the identification of more than 2,000 sequence variations reported worldwide in the CFTR gene. We are now entering a new technological age with the generalization of high throughput approaches such as Next Generation Sequencing and Droplet Digital PCR technologies in diagnostics laboratories. These powerful technologies open up new perspectives for scanning the entire CFTR locus, exploring modifier factors that possibly influence the clinical evolution of patients, and for preimplantation and prenatal diagnosis. Expert commentary: Such breakthroughs would, however, require powerful bioinformatics tools and relevant functional tests of variants for analysis and interpretation of the resulting data. Ultimately, an optimal use of all those resources may improve patient care and therapeutic decision-making.
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  • 文章类型: Journal Article
    Mutations in Thyroglobulin (TG) are common genetic causes of congenital hypothyroidism (CH). But the TG mutation spectrum and its frequency in Chinese CH patients have not been investigated. Here we conducted a genetic screening of TG gene in a cohort of 382 Chinese CH patients. We identified 22 rare non-polymorphic variants including six truncating variants and 16 missense variants of unknown significance (VUS). Seven patients carried homozygous pathogenic variants, and three patients carried homozygous or compound heterozygous VUS. 48 out of 382 patients carried one of 18 heterozygous VUS which is significantly more often than their occurrences in control cohort (P < 0.0001). Unique to Asian population, the c.274+2T>G variant is the most common pathogenic variant with an allele frequency of 0.021. The prevalence of CH due to TG gene defect in Chinese population was estimated to be approximately 1/101,000. Our study uncovered ethnicity specific TG mutation spectrum and frequency.
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