| Literature DB >> 30384854 |
Shuto Hayashi1, Rui Yamaguchi1, Shinichi Mizuno2, Mitsuhiro Komura1, Satoru Miyano1, Hidewaki Nakagawa3, Seiya Imoto4.
Abstract
BACKGROUND: Although human leukocyte antigen (HLA) genotyping based on amplicon, whole exome sequence (WES), and RNA sequence data has been achieved in recent years, accurate genotyping from whole genome sequence (WGS) data remains a challenge due to the low depth. Furthermore, there is no method to identify the sequences of unknown HLA types not registered in HLA databases.Entities:
Keywords: Bayesian hierarchical model; Cancer immunogenomics; HLA genotyping; Markov chain Monte Carlo; Next generation sequencing; Whole exome sequencing; Whole genome sequencing
Mesh:
Substances:
Year: 2018 PMID: 30384854 PMCID: PMC6211482 DOI: 10.1186/s12864-018-5169-9
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Schematic overview of ALPHLARD: a For each read and each HLA type, the HLA read score (HR score) is calculated, which quantifies the likelihood that the read comes from the HLA type. Based on the calculated HR scores, it is determined whether or not the read comes from a certain HLA gene. b For each read and each HLA type, the HLA read score (HR score) is calculated, which quantifies the likelihood that the read comes from the HLA type. Based on the calculated HR scores, it is determined whether or not the read comes from a certain HLA gene
Fig. 2WES-based HLA genotyping of ALPHLARD, OptiType, PHLAT, and HLA-VBSeq. Each WES data was downsampled to 1/2, 1/4, 1/8, and 1/16, and the four methods were applied to all of the original and the downsampled WES data
WGS-based HLA genotyping accuracy that indicates how many HLA types were correctly determined with ALPHLARD, OptiType, PHLAT, and HLA-VBSeq
| ALPHLARD | OptiType | PHLAT | HLA-VBSeq | ||
|---|---|---|---|---|---|
| HLA-A | 1st |
|
| 76.0% (38/50) | 96.0% (48/50) |
| 2nd |
|
| 60.0% (30/50) | 82.0% (41/50) | |
| 3rd |
| N/A | 46.0% (23/50) | 82.0% (41/50) | |
| HLA-B | 1st |
| 87.5% (42/48) | 72.9% (35/48) | 89.6% (43/48) |
| 2nd |
| 85.4% (41/48) | 56.3% (27/48) | 75.0% (36/48) | |
| 3rd |
| N/A | 39.6% (19/48) | 72.9% (35/48) | |
| HLA-C | 1st |
|
| 78.0% (39/50) | 96.0% (48/50) |
| 2nd |
| 94.0% (47/50) | 56.0% (28/50) | 66.0% (33/50) | |
| 3rd |
| N/A | 44.0% (22/50) | 66.0% (33/50) | |
| HLA-DPA1 | 1st |
| N/A | N/A | 87.5% (21/24) |
| 2nd |
| N/A | N/A | 87.5% (21/24) | |
| 3rd |
| N/A | N/A | 87.5% (21/24) | |
| HLA-DPB1 | 1st |
| N/A | N/A | 86.4% (19/22) |
| 2nd |
| N/A | N/A | 86.4% (19/22) | |
| 3rd |
| N/A | N/A | 86.4% (19/22) | |
| HLA-DQA1 | 1st |
| N/A | 70.8% (17/24) |
|
| 2nd |
| N/A | 62.5% (15/24) |
| |
| 3rd |
| N/A | 62.5% (15/24) |
| |
| HLA-DQB1 | 1st |
| N/A | 77.8% (14/18) |
|
| 2nd |
| N/A | 61.1% (11/18) | 88.9% (16/18) | |
| 3rd |
| N/A | 38.9% (7/18) | 88.9% (16/18) | |
| HLA-DRB1 | 1st |
| N/A | 70.8% (17/24) | 95.8% (23/24) |
| 2nd |
| N/A | 50.0% (12/24) | 58.3% (14/24) | |
| 3rd |
| N/A | 45.8% (11/24) | 58.3% (14/24) | |
| Total | 1st |
| 95.9% (142/148) | 74.8% (160/214) | 93.8% (244/260) |
| 2nd |
| 92.6% (137/148) | 57.5% (123/214) | 78.1% (203/260) | |
| 3rd |
| N/A | 45.3% (97/214) | 77.7% (202/260) |
N/A indicates that the method does not support the HLA gene or the resolution
Fig. 3A single-base deletion in exon 1 of the HLA-B gene of patient RK363. IGV screenshots were taken at the position for a the WGS data and b the TruSight HLA Sequencing Panel data. In each of the screenshots, the upper and lower tracks correspond to the normal and tumor samples, respectively
Fig. 4The log odds ratios of the depths at heterozygous SNP positions in the HLA-A gene of patient RK069. The log odds ratios were calculated for a the WGS data and b the TruSight HLA Sequencing Panel data. These log odds ratios correspond to the relative quantities of observed A*26:01:01 SNPs in the tumor sample compared with the normal sample. The red dots indicate the mean values of the log odds ratios, and the vertical lines indicate the 95% confidence intervals