Occurrence density index for behavior classification of zebrafish larvae

Q. Al-Jubouri, W. Al-Nuaimy, M. Al-Taee, J. L. Luna, L. Sneddon
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引用次数: 4

Abstract

Larval zebrafish are proving to be promising subjects for research that is not subject to legal requirements. However, the behavior of this animal has not been fully explored by researchers yet. This paper proposes a new occurrence-density index (ODI) for behavioral analysis and classification of zebrafish larvae. The ODI is identified through a multistage process that includes (i) mapping of the testbed arena into a virtual arena, (ii) projection of the original object's trajectory into the virtual arena, (iii) assessment of the occurrence-density, and (iv) calculation the proposed index. The results obtained from this pilot study clearly demonstrated a promising ability to classify behaviors of zebrafish larvae. The ODI will therefore not only provide a new classification feature to the known set of features for fish behavior analysis but also explain and distinguish different behavioral traits.
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斑马鱼幼虫行为分类的发生密度指数
斑马鱼幼虫被证明是有前途的研究对象,不受法律要求的约束。然而,研究人员还没有充分探索这种动物的行为。本文提出了一种新的发生密度指数(ODI),用于斑马鱼幼虫的行为分析和分类。ODI是通过一个多阶段的过程来确定的,包括(i)将试验台场地映射到虚拟场地,(ii)将原始物体的轨迹投影到虚拟场地,(iii)评估发生密度,以及(iv)计算建议的指数。从这个初步研究中获得的结果清楚地证明了对斑马鱼幼虫行为分类的有希望的能力。因此,ODI不仅为鱼类行为分析的已知特征集提供了新的分类特征,而且还可以解释和区分不同的行为特征。
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