مشخصات پژوهش

صفحه نخست /AICRF: ancestry inference of ...
عنوان AICRF: ancestry inference of admixed population with deep conditional random field
نوع پژوهش مقاله چاپ شده
کلیدواژه‌ها admixed haplotype; admixed population; ancestry inference; proper window length; local ancestry.
چکیده Ancestry inference of admixed populations is an important issue in anthropology and studies of gene discovery, and characterization. Usually, local ancestor inference (LAI) methods use fixed-length windows to divide chromosomes into smaller blocks. The accuracy of LAI algorithms will decrease if a window with an inappropriate length is used to infer the ancestry of admixed individuals. In this study, we first present a heuristic function to determine a proper window length for LAI methods. This heuristic is based on the distance between the ancestral populations of admixed individuals. Then we introduce a method for ancestry inference of admixed population with deep conditional random field (AICRF). AICRF uses a conditional random field (CRF) parameterized by probable extreme learning machines (PELMs) trained on reference panels where PELM is a novel probabilistic ELM classifier. This method does not require many statistical or biological parameters. We evaluate the performance of AICRF in comparison with RFMix. Experimental results show that AICRF is more accurate than RFMix with increasing admixture times.
پژوهشگران فاطمه وفایی (نفر چهارم)، امید جزایری (نفر سوم)، حمید جزایری (نفر دوم)، فرهاد علیزاده (نفر اول)