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使用深度学习的计算机视觉系统预测巨脂鲤的肋骨和腰部产量。

Computer vision system using deep learning to predict rib and loin yield in the fish Colossoma macropomum.

作者信息

Ariede Raquel B, Lemos Celma G, Batista Fabrício M, Oliveira Rubens R, Agudelo John F G, Borges Carolina H S, Iope Rogério L, Almeida Fernanda L O, Brega José R F, Hashimoto Diogo T

机构信息

Aquaculture Center of Unesp, São Paulo State University, Jaboticabal, SP, Brazil.

School of Sciences, São Paulo State University, Bauru, SP, Brazil.

出版信息

Anim Genet. 2023 Jun;54(3):375-388. doi: 10.1111/age.13302. Epub 2023 Feb 9.

Abstract

Computer vision system (CVSs) are effective tools that enable large-scale phenotyping with a low-cost and non-invasive method, which avoids animal stress. Economically important traits, such as rib and loin yield, are difficult to measure; therefore, the use of CVS is crucial to accurately predict several measures to allow their inclusion in breeding goals by indirect predictors. Therefore, this study aimed (1) to validate CVS by a deep learning approach and to automatically predict morphometric measurements in tambaqui and (2) to estimate genetic parameters for growth traits and body yield. Data from 365 individuals belonging to 11 full-sib families were evaluated. Seven growth traits were measured. After biometrics, each fish was processed in the following body regions: head, rib, loin, R + L (rib + loin). For deep learning image segmentation, we adopted a method based on the instance segmentation of the Mask R-CNN (Region-based Convolutional Neural Networks) model. Pearson's correlation values between measurements predicted manually and automatically by the CVS were high and positive. Regarding the classification performance, visible differences were detected in only about 3% of the images. Heritability estimates for growth and body yield traits ranged from low to high. The genetic correlations between the percentage of body parts and morphometric characteristics were favorable and highly correlated, except for percentage head, whose correlations were unfavorable. In conclusion, the CVS validated in this image dataset proved to be resilient and can be used for large-scale phenotyping in tambaqui. The weight of the rib and loin are traits under moderate genetic control and should respond to selection. In addition, standard length and pelvis length can be used as an efficient and indirect selection criterion for body yield in this tambaqui population.

摘要

计算机视觉系统(CVSs)是有效的工具,能够以低成本、非侵入性的方法实现大规模表型分析,避免了动物应激。一些经济上重要的性状,如肋骨和腰肉产量,难以测量;因此,使用CVS对于准确预测多种指标至关重要,以便通过间接预测指标将其纳入育种目标。因此,本研究旨在:(1)通过深度学习方法验证CVS,并自动预测遮目鱼的形态测量值;(2)估计生长性状和身体产量的遗传参数。对来自11个全同胞家系的365个个体的数据进行了评估。测量了七个生长性状。进行生物测量后,对每条鱼的以下身体部位进行处理:头部、肋骨、腰肉、R + L(肋骨 + 腰肉)。对于深度学习图像分割,我们采用了一种基于Mask R-CNN(基于区域的卷积神经网络)模型实例分割的方法。CVS手动预测和自动预测的测量值之间的Pearson相关值为高度正相关。关于分类性能,仅在约3%的图像中检测到明显差异。生长和身体产量性状的遗传力估计值范围从低到高。身体各部位百分比与形态特征之间的遗传相关性良好且高度相关,但头部百分比除外,其相关性不利。总之,在该图像数据集中验证的CVS被证明具有弹性,可用于遮目鱼的大规模表型分析。肋骨和腰肉的重量是受中等遗传控制的性状,应该对选择有响应。此外,标准长度和骨盆长度可作为该遮目鱼群体身体产量的有效间接选择标准。

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