PT - JOURNAL ARTICLE AU - Morgane Roth AU - Mario Di Guardo AU - Walter Guerra AU - Hélène Muranty AU - Andrea Patocchi AU - Fabrizio Costa TI - Prediction of fruit texture with training population optimization for efficient genomic selection in apple AID - 10.1101/862193 DP - 2019 Jan 01 TA - bioRxiv PG - 862193 4099 - http://biorxiv.org/content/early/2019/12/02/862193.short 4100 - http://biorxiv.org/content/early/2019/12/02/862193.full AB - Texture plays a major role in the determination of fruit quality in apple. Due to its physiological and economic relevance, this trait has been largely investigated, leading to the fixation of the major gene PG1 controlling firmness in elite cultivars. To further improve fruit texture, the targeting of an undisclosed reservoir of loci with minor effects is compelling. In this work, we aimed to unlock this potential with a genomic selection approach by predicting fruit acoustic and mechanical features as obtained with a TA.XTplus texture analyzer in 537 individuals genotyped with 8,294 SNP markers. The best prediction accuracies following cross-validations within the training set (TRS) of 259 individuals were obtained for the acoustic linear distance (0.64). Prediction accuracy was further improved through the optimization of TRS size and composition according to the test set. With this strategy, a maximal accuracy of 0.81 was obtained when predicting the synthetic trait PC1 in the family ‘Gala × Pink Lady’. We discuss the impact of genetic relatedness and clustering on trait variability and predictability. Moreover, we demonstrated the need for a comprehensive dissection of the complex texture phenotype and the potentiality of using genomic selection to improve fruit quality in apple.Highlight A genomic selection study, together with the optimization of the training set, demonstrated the possibility to accurately predict texture sub-traits valuable for the amelioration of fruit quality in apple.