caopornx在线超碰免费-欧美亚洲性色影视在线-人妻无码AV一区二区三区-欧美日韩国产一区二区三区播放-青青草原精品国产亚洲AV-日本黄A级A片国产免费-亚洲精品一区久久久久久-成人18禁在线WWW免费视频

論文
您當(dāng)前的位置 :
Comparative analysis of models in predicting the effects of SNPs on TF-DNA binding using large-scale in vitro and in vivo data
論文作者 Han, DM; Li, YR; Wang, LX; Liang, X; Miao, YY; Li, WR; Wang, SJ; Wang, Z
期刊/會(huì)議名稱 BRIEFINGS IN BIOINFORMATICS
論文年度 2024
論文類別
摘要 Non-coding variants associated with complex traits can alter the motifs of transcription factor (TF)-deoxyribonucleic acid binding. Although many computational models have been developed to predict the effects of non-coding variants on TF binding, their predictive power lacks systematic evaluation. Here we have evaluated 14 different models built on position weight matrices (PWMs), support vector machines, ordinary least squares and deep neural networks (DNNs), using large-scale in vitro (i.e. SNP-SELEX) and in vivo (i.e. allele-specific binding, ASB) TF binding data. Our results show that the accuracy of each model in predicting SNP effects in vitro significantly exceeds that achieved in vivo. For in vitro variant impact prediction, kmer/gkm-based machine learning methods (deltaSVM_HT-SELEX, QBiC-Pred) trained on in vitro datasets exhibit the best performance. For in vivo ASB variant prediction, DNN-based multitask models (DeepSEA, Sei, Enformer) trained on the ChIP-seq dataset exhibit relatively superior performance. Among the PWM-based methods, tRap demonstrates better performance in both in vitro and in vivo evaluations. In addition, we find that TF classes such as basic leucine zipper factors could be predicted more accurately, whereas those such as C2H2 zinc finger factors are predicted less accurately, aligning with the evolutionary conservation of these TF classes. We also underscore the significance of non-sequence factors such as cis-regulatory element type, TF expression, interactions and post-translational modifications in influencing the in vivo predictive performance of TFs. Our research provides valuable insights into selecting prioritization methods for non-coding variants and further optimizing such models.
2
25
影響因子 6.8
熟妇良家精品在线视频 | 天天伊人狠狠久久中文av| 国产精品98| 蜜臀久久99精品久久久老牛影视| a天堂精品| 91精品中文字幕| 日韩精品性爱| 少妇精品无码| 国产在线拍偷自揄拍精品| 国产精品一区av| 2023国产精品视频| 日韩精品人妻中文字幕有码电影 | 欧美熟女 国产精品| 亚洲成人熟妇精品一区三区| 国产亚洲精品AV| 精品自拍视频免费| 99精品视频69v精品视频免费密臀| 99久久精品欧美一区二区三区| 精品乱伦一区二区三区| 久久成人人人人精品欧| 日韩精品免费一区二区三区竹菊 |