A review of multimodal deep learning methods for genomic-enabled prediction in plant breeding
文献类型: 外文期刊
第一作者: Montesinos-Lopez, Osval A.
作者: Montesinos-Lopez, Osval A.;Chavira-Flores, Moises;Crespo-Herrera, Leo;Saint Piere, Carolina;Crossa, Jose;Li, Huihui;Fritsche-Neto, Roberto;Crossa, Jose;Al-Nowibet, Khalid;Montesinos-Lopez, Abelardo;Crossa, Jose;Crossa, Jose
作者机构:
关键词: data fusion; genomic prediction; multimodal deep learning; plant breeding
期刊名称:GENETICS ( 影响因子:5.1; 五年影响因子:4.1 )
ISSN: 0016-6731
年卷期: 2024 年 228 卷 4 期
页码:
收录情况: SCI
摘要: Deep learning methods have been applied when working to enhance the prediction accuracy of traditional statistical methods in the field of plant breeding. Although deep learning seems to be a promising approach for genomic prediction, it has proven to have some limitations, since its conventional methods fail to leverage all available information. Multimodal deep learning methods aim to improve the predictive power of their unimodal counterparts by introducing several modalities (sources) of input information. In this review, we introduce some theoretical basic concepts of multimodal deep learning and provide a list of the most widely used neural network architectures in deep learning, as well as the available strategies to fuse data from different modalities. We mention some of the available computational resources for the practical implementation of multimodal deep learning problems. We finally performed a review of applications of multimodal deep learning to genomic selection in plant breeding and other related fields. We present a meta-picture of the practical performance of multimodal deep learning methods to highlight how these tools can help address complex problems in the field of plant breeding. We discussed some relevant considerations that researchers should keep in mind when applying multimodal deep learning methods. Multimodal deep learning holds significant potential for various fields, including genomic selection. While multimodal deep learning displays enhanced prediction capabilities over unimodal deep learning and other machine learning methods, it demands more computational resources. Multimodal deep learning effectively captures intermodal interactions, especially when integrating data from different sources. To apply multimodal deep learning in genomic selection, suitable architectures and fusion strategies must be chosen. It is relevant to keep in mind that multimodal deep learning, like unimodal deep learning, is a powerful tool but should be carefully applied. Given its predictive edge over traditional methods, multimodal deep learning is valuable in addressing challenges in plant breeding and food security amid a growing global population.
分类号:
- 相关文献
作者其他论文 更多>>
-
Synergistic pathogenicity of novel duck Orthoreovirus and salmonella typhimurium in ducks
作者:Li, Bing;Mao, Mingtian;Li, Huihui;Wu, Mian;Lu, Chengguang;Lu, Meixi;Guo, Zhanbao;Liang, Suyun;Zhou, Zhengkui;Hou, Shuisheng;Tang, Yi;Man, Xinhong;Yuan, Mengdi;Diao, Youxiang
关键词:Novel Duck Orthoreovirus; Salmonella Typhimurium; Co-infection; Co-pathogenicity
-
Phenylpropanoids metabolism: recent insight into stress tolerance and plant development cues
作者:Ninkuu, Vincent;Zhao, Jun;Li, Huihui;Dakora, Felix Dapare;Ninkuu, Vincent;Yan, Jianpei;Zeng, Hongmei;Aluko, Oluwaseun Olayemi;Liu, Guodao;Chen, Songbi;Zhao, Jun;Li, Huihui;Dakora, Felix Dapare
关键词:phenylpropanoids; plant interactions; post-transcription; post-translation; epigenetics modifications; plant development
-
Prediction by simulation in plant breeding
作者:Li, Huihui;Zhang, Luyan;Gao, Shang;Wang, Jiankang;Li, Huihui;Zhang, Luyan;Gao, Shang;Wang, Jiankang;Li, Huihui;Gao, Shang;Wang, Jiankang
关键词:Prediction by simulation; Plant breeding; Modeling; Genetic model; Breeding method
-
Fast-forwarding plant breeding with deep learning-based genomic prediction
作者:Gao, Shang;Yu, Tingxi;Wang, Jiankang;Li, Huihui;Gao, Shang;Yu, Tingxi;Wang, Jiankang;Li, Huihui;Rasheed, Awais;Crossa, Jose;Hearne, Sarah
关键词:artificial intelligence; deep learning; genomic prediction; plant breeding
-
Exploring the Impacts of Elevated CO2 on Food Security: Nutrient Assimilation, Plant Growth, and Crop Quality
作者:Dakora, Felix D.;Li, Huihui;Zhao, Jun;Dakora, Felix D.;Li, Huihui;Zhao, Jun
关键词:Photosynthesis; N 2 fixation; Reduced plant nitrogen; Amino acids and nutrients
-
Leveraging Automated Machine Learning for Environmental Data-Driven Genetic Analysis and Genomic Prediction in Maize Hybrids
作者:He, Kunhui;Yu, Tingxi;Gao, Shang;Chen, Shoukun;Li, Liang;Zhang, Xuecai;Huang, Changling;Xu, Yunbi;Wang, Jiankang;Li, Xinhai;Li, Huihui;He, Kunhui;Yu, Tingxi;Gao, Shang;Chen, Shoukun;Zhang, Xuecai;Huang, Changling;Wang, Jiankang;Li, Huihui;Zhang, Xuecai;Hearne, Sarah;Prasanna, Boddupalli M.
关键词:environmental data; genetic analysis; genomic selection; genotype-by-environment interactions; machine learning
-
Non-Random Distribution of EMS-Induced Mutations Reveals Preference for Open Chromatin and Expressed Genes in Rice
作者:Yao, Xue-Feng;Jiang, Guo-Qiang;Liu, Chun-Ming;Liu, Yanhong;Li, Zhiyong;Wang, Wensheng;Li, Huihui;Lu, Zefu;Liu, Chun-Ming;Lu, Hong;Liu, Chun-Ming
关键词:chromatin accessibility; EMS mutagenesis; natural variations