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首页> 外文期刊>Aquaculture Research >Logit models for evaluating spawning performance of channel catfish, Ictalurus punctatus (Rafinesque).
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Logit models for evaluating spawning performance of channel catfish, Ictalurus punctatus (Rafinesque).

机译:Logit模型,用于评估槽cat鱼(Ictalurus punctatus(Rafinesque))的产卵性能。

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Broodstock evaluations are often measured by variables such as spawning success, fecundity, fertilization and hatching rates, usually expressed as percentage values. Outcomes are generally analysed as continuous random variables, assuming that they follow a normal distribution. Ordinary linear regression models (e.g. analysis of variance) as well as chi 2 analysis are typically applied. However, these models may not be the most appropriate as a number of test criteria may not be met. For example, spawning success outcomes are inherently discrete and non-negative data and hence their distribution is not likely to be normal. As these models may not be the most appropriate, a case study using logit analysis as an alternative method for the evaluation of this type of data is presented by considering the response as binary data (spawned versus did not spawn). An exact version of logit analysis was performed due to the sparseness of the data. The results demonstrate that appropriate statistical models provide better insight into the cause-effect relationships that exist between control variables and the dependent variable (likelihood of spawning in this case). As would be expected, each strain of fish responded somewhat differently to the test variables. Changing the protein level of the diet from 32% to 42% or increasing the feeding frequency from three to six times per week either did not influence spawning or negatively affected spawning respectively. Additionally, older fish performed better than younger fish and the early spawning period was better than the later spawning period, regardless of strain. These responses, however, were only detected using logit analysis, which is a more sensitive test and would thus be recommended for this type of data..
机译:亲鱼评估通常通过诸如产卵成功率,繁殖力,受精率和孵化率等变量来衡量,通常以百分比值表示。假设结果服从正态分布,通常将结果分析为连续随机变量。通常使用普通的线性回归模型(例如方差分析)以及chi 2分析。但是,这些模型可能不是最合适的,因为可能无法满足许多测试标准。例如,产卵成功结果本质上是离散且非负的数据,因此它们的分布不太可能是正态的。由于这些模型可能不是最合适的,因此通过将响应视为二进制数据(生成与未生成),提出了使用logit分析作为评估此类数据的替代方法的案例研究。由于数据稀疏,因此执行了精确版本的logit分析。结果表明,适当的统计模型可以更好地了解控制变量和因变量之间存在的因果关系(在这种情况下产生的可能性)。不出所料,每种鱼类对测试变量的反应都有些不同。将饮食中的蛋白质含量从32%更改为42%或将进食频率从每周3次增加到6次,分别不会影响产卵或对产卵产生负面影响。另外,不管应变如何,年长的鱼的表现要比年幼的鱼好,早期的产卵期比后期的产卵期要好。但是,只能使用logit分析检测到这些响应,这是一种更为敏感的测试,因此建议将其用于此类数据。

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