在显微镜图像分类中创建ML的有效性:非数据科学家的简单而廉价的深度学习管道。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2021-12-01 Epub Date: 2021-10-14 DOI:10.1007/s10577-021-09676-z
Kiyotaka Nagaki, Tomoyuki Furuta, Naoki Yamaji, Daichi Kuniyoshi, Megumi Ishihara, Yuji Kishima, Minoru Murata, Atsushi Hoshino, Hirotomo Takatsuka
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引用次数: 3

摘要

观察染色体是一个耗时费力的过程,多年来一直是人工分析染色体。在过去的十年中,显微图像的自动采集系统由于其控制计算机系统的进步而取得了巨大的进步,如今,可以自动获取由大量,超过1000张来自大面积标本的图像组成的图像集。然而,目前还没有一种简单而廉价的系统可以有效地从这些图像中选择含有有丝分裂细胞的图像。本文采用了一种非数据科学家可以轻松处理的深度学习人工智能(AI)染色体图像分类系统。使用该系统,可以在Macintosh计算机上使用Create ML轻松构建适合我们自己样本的模型。例如,通过使用来自各种植物物种的染色体图像进行学习构建的模型能够对来自未用于学习的植物物种的样本中包含有丝分裂细胞的图像进行分类。该系统也适用于组织切片和四分体的细胞。由于该系统价格低廉,并且可以通过使用科学家自己的样本进行深度学习来轻松训练,因此它不仅可以用于染色体图像分析,还可以用于其他生物学相关图像的分析。
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Effectiveness of Create ML in microscopy image classifications: a simple and inexpensive deep learning pipeline for non-data scientists.

Observing chromosomes is a time-consuming and labor-intensive process, and chromosomes have been analyzed manually for many years. In the last decade, automated acquisition systems for microscopic images have advanced dramatically due to advances in their controlling computer systems, and nowadays, it is possible to automatically acquire sets of tiling-images consisting of large number, more than 1000, of images from large areas of specimens. However, there has been no simple and inexpensive system to efficiently select images containing mitotic cells among these images. In this paper, a classification system of chromosomal images by deep learning artificial intelligence (AI) that can be easily handled by non-data scientists was applied. With this system, models suitable for our own samples could be easily built on a Macintosh computer with Create ML. As examples, models constructed by learning using chromosome images derived from various plant species were able to classify images containing mitotic cells among samples from plant species not used for learning in addition to samples from the species used. The system also worked for cells in tissue sections and tetrads. Since this system is inexpensive and can be easily trained via deep learning using scientists' own samples, it can be used not only for chromosomal image analysis but also for analysis of other biology-related images.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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