百家乐怎么玩-澳门百家乐官网娱乐城网址_网上百家乐是不是真的_全讯网888 (中国)·官方网站

A powerful computational tool for efficient analysis of cell division 4D image data

 

A joint research team co-led by City University of Hong Kong (CityU) has developed a novel computational tool that can reconstruct and visualise three-dimensional (3D) shapes and temporal changes of cells, speeding up the analysing process from hundreds of hours by hand to a few hours by computer. Revolutionising the way biologists analyse image data, this tool can advance further studies in developmental and cell biology, such as the growth of cancer cells.

The interdisciplinary study was co-led by Professor Yan Hong, Chair Professor of Computer Engineering and Wong Chung Hong Professor of Data Engineering in the Department of Electrical Engineering (EE) at CityU, together with biologists from Hong Kong Baptist University (HKBU) and Peking University. Their findings have been published in the scientific journal Nature Communications, titled “Establishment of a morphological atlas of the Caenorhabditis elegans embryo using deep-learning-based 4D segmentation”.

The tool developed by the team is called “CShaper”. “It is a powerful computational tool that can segment and analyse cell images systematically at the single-cell level, which is much needed for the study of cell division, and cell and gene functions,” described Professor Yan.

cshaper
Morphological dynamics of cell division of C. elegans embryo cell at single-cell resolution. (Photo source: DOI number: 10.1038/s41467-020-19863-x)

 

Bottleneck in analysing massive amount of cell division data

Biologists have been investigating how animals grow from a single cell, a fertilised egg, into organs and the whole body through countless cell divisions. In particular, they want to know the gene functions, such as the specific genes involved in cell divisions for forming different organs, or what causes the abnormal cell divisions leading to tumourous growth.

A way to find the answer is to use the gene knockout technique. With all genes present, researchers first obtain cell images and the lineage tree. Then they “knock out” (remove) a gene from the DNA sequence, and compare the two lineage trees to analyse changes in the cells and infer gene functions. Then they repeat the experiment with other genes being knocked out.

In the study, the collaborating biologist team used Caenorhabditis elegans (C. elegans) embryos to produce terabytes of data for Professor Yan’s team to perform computational analysis. C. elegans is a type of worm which share many essential biological characteristics with humans and provide a valuable model for studying the tumour growth process in humans.

“With estimated 20,000 genes in C. elegans, it means nearly 20,000 experiments would be needed if knocking out one gene at a time. And there would be an enormous amount of data. So it is essential to use an automated image analysis system. And this drives us to develop a more efficient one,” he said.

Breakthrough in segmenting cell images automatically

Cell images are usually obtained by laser beam scanning. The existing image analysis systems can only detect cell nucleus well with a poor cell membrane image quality, hampering reconstruction of cell shapes. Also, there is a lack of reliable algorithm for the segmentation of time-lapsed 3D images (i.e. 4D images) of cell division. Image segmentation is a critical process in computer vision that involves dividing a visual input into segments to simplify image analysis. But researchers have to spend hundreds of hours labelling many cell images manually.

The breakthrough in CShaper is that it can detect cell membranes, build up cell shapes in 3D, and more importantly, automatically segment the cell images at the cell level. “Using CShaper, biologists can decipher the contents of these images within a few hours. It can characterise cell shapes and surface structures, and provide 3D views of cells at different time points,” said Cao Jianfeng, a PhD student in Professor Yan’s group, and a co-first author of the paper.

To achieve this, the deep-learning-based model DMapNet developed by the team plays a key role in the CShaper system. “By learning to capture multiple discrete distances between image pixels, DMapNet extracts the membrane contour while considering shape information, rather than just intensity features. Therefore CShaper achieved a 95.95% accuracy of identifying the cells, which outperformed other methods substantially,” he explained.

cshaper
The framework of CShaper. With deep-learning-based DMapNet, time-lapse 3D cell shapes across the development with defined cell identity are generated (shown in the right green box).  (Photo source: DOI number: 10.1038/s41467-020-19863-x)

 

With CShaper, the team generated a time-lapse 3D atlas of cell morphology for the C. elegans embryo from the 4- to 350-cell stages, including cell shape, volume, surface area, migration, nucleus position and cell-cell contact with confirmed cell identities.

cshaper
3D projections of images of nuclei (green and white dots) and membranes (red lines) at different time points.  (Photo source: DOI number: 10.1038/s41467-020-19863-x)

 

Advancing further studies in tumour growth

“To the best of our knowledge, CShaper is the first computational system for segmenting and analysing the images of C. elegans embryo systematically at the single-cell level,” said Mr Cao. “Through close collaborations with biologists, we proudly developed a useful computer tool for automated analysis of a massive amount of cell image data. We believe it can promote further studies in developmental and cell biology, in particular in understanding the origination and growth of cancer cells,” Professor Yan added.

They also tested CShaper on plant tissue cells, showing promising results. They believe the computer tool can be adopted to other biological studies.

Professor Yan, Professor Tang Chao from Peking University, and Professor Zhao Zhongying from HKBU are the corresponding authors of the paper. The co-first authors are Cao Jianfeng, PhD student from EE at CityU, Guan Guoye from Peking University, and Ho Vincy Wing Sze from HKBU.

cshaper
Professor Yan Hong (left) and his PhD student Cao Jianfeng (right).

 

The funding support for the study included the National Institutes of Health, Hong Kong Research Grants Council, the Ministry of Science and Technology of China, and the National Natural Science Foundation of China.

DOI number: 10.1038/s41467-020-19863-x

Newsletter Subscription: Research 

* indicates required

Areas of Interest 

Contact Information

Back to top
民权县| 凤凰娱乐开户| 玩百家乐官网上高尔夫娱乐场| 玩机器百家乐心得| 678百家乐博彩赌场娱乐网规则| 菲彩线上娱乐| 百家乐官网无损打法| 新世百家乐的玩法技巧和规则| 太阳城娱乐正网| 百家乐官网视频游戏网站| 精英百家乐现金网| 澳门顶级赌场手机在线登陆 | 真人百家乐官网技巧| 做生意开店铺风水大全| 大发888打不开| 试玩百家乐官网1000| 威尼斯人娱乐城老| 百家乐官网如何玩法| 哪个百家乐网站最大| 和记娱乐| 狮威百家乐官网的玩法技巧和规则 | 百家乐官网最好打法与投注| 百家乐官网红桌布| 德州扑克桌| 百家乐破解的办法| 老江死了| 百家乐赌博策略大全| 百家乐官网投注方法网| 玩百家乐澳门368娱乐城| 米易县| 真人百家乐送钱| 百家乐官网清零| 太阳城线上娱乐城| 金殿百家乐官网的玩法技巧和规则 | 大发888娱乐城注册lm0| 百家乐官网专用台布| 大发888娱乐城3403| 诺贝尔百家乐官网的玩法技巧和规则| 本溪亿酷棋牌下载| 去澳门百家乐娱乐城| 百家乐官网娱乐优惠|