统计能力
杠杆(统计)
可执行文件
计算机科学
样本量测定
排名(信息检索)
遗传关联
数据挖掘
计算生物学
统计
基因型
机器学习
生物
遗传学
数学
基因
单核苷酸多态性
操作系统
作者
Lauren Mak,Minghao Li,Chen Cao,Paul M. K. Gordon,Maja Tarailo‐Graovac,Chad Bousman,Pei Wang,Quan Long
摘要
ABSTRACT Power estimations are important for optimizing genotype‐phenotype association study designs. However, existing frameworks are designed for common disorders, and thus ill‐suited for the inherent challenges of studies for low‐prevalence conditions such as rare diseases and infrequent adverse drug reactions. These challenges include small sample sizes and the need to leverage genetic annotation resources in association analyses for the purpose of ranking potential causal genes. We present SimPEL, a simulation‐based program providing power estimations for the design of low‐prevalence condition studies. SimPEL integrates the usage of gene annotation resources for association analyses. Customizable parameters, including the penetrance of the putative causal allele and the employed pathogenic scoring system, allow SimPEL to realistically model a large range of study designs. To demonstrate the effects of various parameters on power, we estimated the power of several simulated designs using SimPEL and captured power trends in agreement with observations from current literature on low‐frequency condition studies. SimPEL, as a tool, provides researchers studying low‐frequency conditions with an intuitive and highly flexible avenue for statistical power estimation. The platform‐independent “batteries included” executable and default input files are available at https://github.com/precisionomics/SimPEL .
科研通智能强力驱动
Strongly Powered by AbleSci AI