CellBoost: A pipeline for machine assisted annotation in neuroanatomy

Kui Qian , Beth Friedman , Jun Takatoh , Alexander Groisman , Fan Wang , David Kleinfeld , Yoav Freund
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引用次数: 0

Abstract

One of the important yet labor intensive tasks in neuroanatomy is the identification of select populations of cells. Current high-throughput techniques enable marking cells with histochemical fluorescent molecules as well as through the genetic expression of fluorescent proteins. Modern scanning microscopes allow high resolution multi-channel imaging of the mechanically or optically sectioned brain with thousands of marked cells per square millimeter. Manual identification of all marked cells is prohibitively time consuming. At the same time, simple segmentation algorithms to identify marked cells suffer from high error rates and sensitivity to variation in fluorescent intensity and spatial distribution.

We present a methodology that combines human judgement and machine learning that serves to significantly reduce the labor of the anatomist while improving the consistency of the annotation.

As a demonstration, we analyzed murine brains with marked premotor neurons in the brainstem. We compared the error rate of our method to the disagreement rate among human anatomists. This comparison shows that our method can reduce the time to annotate by as much as ten-fold without significantly increasing the rate of errors. We show that our method achieves significant reduction in labor while achieving an accuracy that is similar to the level of agreement between different anatomists.

CellBoost:神经解剖学中的机器辅助注释管道
神经解剖学中一项重要而又耗费大量人力的工作是识别选定的细胞群。目前的高通量技术可通过组织化学荧光分子以及荧光蛋白的基因表达对细胞进行标记。现代扫描显微镜可对机械或光学切片的大脑进行高分辨率多通道成像,每平方毫米可显示数千个标记细胞。手动识别所有标记细胞非常耗时。与此同时,用于识别标记细胞的简单分割算法存在错误率高、对荧光强度和空间分布变化敏感等问题。我们提出了一种将人工判断与机器学习相结合的方法,该方法可显著减少解剖学家的劳动,同时提高注释的一致性。作为演示,我们分析了脑干中带有标记的前运动神经元的鼠脑。我们将我们方法的错误率与人类解剖学家之间的分歧率进行了比较。比较结果表明,我们的方法可以将标注时间缩短十倍之多,而错误率却不会明显增加。我们的研究表明,我们的方法在显著减少工作量的同时,还能达到与不同解剖学家之间的一致水平相近的精确度。
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CiteScore
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