Genetic Analysis of Complex Disease. Группа авторов
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Название: Genetic Analysis of Complex Disease

Автор: Группа авторов

Издательство: John Wiley & Sons Limited

Жанр: Биология

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isbn: 9781119104070

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СКАЧАТЬ This is especially true if there are other data to support the involvement of genetics, such as twin data or familial clustering. In spite of these difficulties, there are examples of the successful application of segregation analysis to complex disorders, even to psychiatric disorders that tend to have the additional complexity of defining a precise phenotype for investigation (evidence for a Mendelian genetic factor contributing to obsessive compulsive disease and (Nestadt et al. 2000; Notarnicola et al. 2000).

      The analyses presented in this chapter will aid in determining whether genes play an important role in a condition or trait. It is important to establish a genetic basis before embarking on more elaborate analyses such as whole genome scans using linkage and/or association analysis because of the ethical, financial, and labor challenges associated with them. However, the first step in the analytic process should be a thorough examination of the literature. Often, because complex disorders are common and of public health importance, many of the analyses discussed in this chapter will have been previously completed by other investigators. Therefore, there may already exist sufficient evidence to support the involvement of genetics in the etiology of the disorder under investigation but evaluate the literature critically, keeping in mind how the study population (including age and ethnicity) and phenotype was defined in each of the published analyses. Significant deviations from the definition of one’s own study population and phenotype may suggest that prior results do not generalize to the present study and may necessitate repeating of the analyses described in this chapter.

      If one determines that the types of analyses presented in this chapter (or any of the other chapters) must be performed, give careful consideration to study design prior to collecting and analyzing the data. Study design will influence the types of biases introduced into the data and can limit the types of analyses that may be performed.

      Keep in mind that for complex genetic disorders, there may be a high percentage of the patient population for whom the disorder is sporadic (no other affected family members), and the genetic mechanisms that lead to complex disorders may or may not be the same in familial and sporadic cases. For example, the BRCA1 gene that has been implicated in familial cases of breast cancer is not frequently mutated in cases of sporadic breast cancer (Easton et al. 1993; Futreal et al. 1994). This caveat is also important when comparing genetic mechanisms for early‐onset versus late‐onset familial versions of a disorder.

      Finally, recognize that statistical associations for familial clustering may not represent a genetic etiology for a disorder but may be due to a common familial environment, or simply chance. The definitive evidence that a disorder is genetic is the identification of the specific genetic variations that lead to the condition.

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