久久婷婷久久一区二区三区-女人张开腿让男人桶爽-成人视频在线观看-国产在线精品国自产拍影院同性-麻豆一二三区精品蜜桃

熱門搜索:A549    293T 金黃色葡萄球菌 大腸桿菌 AKK菌
購物車 1 種商品 - 共0元
當前位置: 首頁 > 行業資訊 > Making digital tissue imaging better

Making digital tissue imaging better

 

Making digital tissue imaging better

Biomedical researchers develop first open-source, quality-control review tool for fast-growing digital pathology field

Date:April 18, 2019

Source:Case Western Reserve University

Summary:A low-tech problem troubles the high-tech world of digital pathology imaging: There are no reliable standards for the quality of digitized tissue slides comprising the source material for computers reading and analyzing vast numbers of images. Poor-quality slides get mixed in with accurate slides, potentially confusing a computer program trying to learn what a cancerous cell looks like. Researchers are trying to fix this, sharing an open-source quality control standard.

There's a low-tech problem troubling the high-tech world of digital pathology imaging.

The issue: Even as digital pathology makes rapid advances worldwide -- with more physicians analyzing tissue images on "smart" computers to diagnose patients -- there are no reliable standards for the preparation and digitization of the tissue slides themselves.

That means poor quality slides get mixed in with clear and accurate slides, potentially confusing or misleading a computer program trying to learn what a cancerous cell looks like, for example.

Researchers from Case Western Reserve University are trying to change that.

Bioengineering researcher Anant Madabhushi and Andrew Janowczyk, a senior research fellow in Madabhushi's Center for Computational Imaging and Personal Diagnostics, have developed a program that they say will ensure the quality of digital images being used for diagnostic and research purposes.

The two unveiled their new quality-control tool in the most recent edition of the Journal of Clinical Oncology Clinical Informatics and are being supported by a three-year, $1.2 million grant from the National Cancer Institute.

The new tool incorporates a series of measurements and classifiers to help users flag corrupted images and help retain those that will aid technicians and physicians in their diagnoses.

"The idea is simple: assess digital images and determine which slides are worthy for analysis by a computer and which are not," said Madabhushi, the F. Alex Nason Professor II of biomedical engineering at the Case School of Engineering. "This is important right now as digital pathology is taking off worldwide and laying the groundwork for more use of AI (artificial intelligence) for interrogating tissue images."

The application is "open source" -- or free for anyone to use, modify and extend. It can be accessed through an online repository. It was developed by Janowczyk about 18 months ago after discovering what he believed to be a surprising number of poor-quality slides from the well-known Cancer Genome Atlas, home to more than 30,000 tissue slides of cancer samples.

Janowczyk said about 10 percent of the 800 cancer sample slides he reviewed had problems, ranging from a crack in the slide or an air bubble between the slide's layers.

'Knife chatter' among many slide imperfections

To appreciate the value -- and risk -- in relying on the highly technical, smart-computer, digital-imaging cancer diagnosis, it's helpful to understand the fundamental steps in getting there.

While these high-tech approaches can process thousands of images per second, they're relying on digital images of the same kind of tissue slides that pathologists have been making for generations. And those slides, when viewed through a microscope, have more imperfections than you might think.

To create a slide, the pathologist first harvests a block of tissue from an organ dissection, places a small slice of the tissue on a piece of glass that will make up a slide. The tissue is then stained to reveal its cellular patterns. A second smaller piece of glass is then placed on top of the tissue sample to protect it.

The quality can be compromised in slide preparation by air bubbles, smears and ragged cuts (called "knife chatter") in the tissue or even during the digitization process which may introduce blurriness and brightness issues.

"A microscope can't focus on areas that have distorted quality," said Janowczyk, who is also a bioinformatician at the Swiss Institute of Bioinformatics. (Bioinformatics is the science of collecting and analyzing complex biological data such as genetic codes or, in this case, digitized images of tissue slides.) "And it took me days to go through all of those slides to manually identify and remove the bad ones. It was then that I realized we needed a faster, automated way to make sure we had only the good tissue slide images."

The result, Madabhushi said, moves toward a true "democratization of imaging technology" for better diagnoses of cancer and other diseases.

Partners on the new project -- called "Histo-QC," for "histology," the study of the microscopic structure of tissues, and "Quality Control" -- include researchers from University Hospitals, the Perelman School of Medicine at the University of Pennsylvania and the Louis Stokes Cleveland VA Medical Center.

Madabhushi established the CCIPD at Case Western Reserve in 2012. The lab, which now includes about 50 researchers, has become a global leader in the detection, diagnosis and characterization of various cancers and other diseases by meshing medical imaging, machine learning and artificial intelligence.

Some of its most recent work, in collaboration with others from New York University and Yale University, has been using AI to predict which lung cancer patients would benefit from adjuvant chemotherapy based off tissue slide images. That advancement was named by by Prevention Magazine as one of the top 10 medical breakthroughs of 2018.

advertisement


Story Source:

Materials provided by Case Western Reserve UniversityNote: Content may be edited for style and length.

 

主站蜘蛛池模板: 亚洲成av人片无码天堂下载| 边啃奶头边躁狠狠躁| 国产日产欧美最新| 色偷偷色噜噜狠狠成人免费视频| 人人妻人人澡人人爽精品日本| 国产亚洲精品aaaaaaa片| 日本一本免费一二区| 国产精华av午夜在线| 97se亚洲国产综合自在线| 国产 日韩 欧美 视频 制服| 午夜爽爽爽男女免费观看hd| 国产成人a∨激情视频厨房| 强奷漂亮少妇高潮伦理| 久久精品国产丝袜人妻| 中国少妇嫖妓bbwbbw| 日韩av无码久久精品免费| 欧美s码亚洲码精品m码| 野花社区在线www日本| 欧美激情综合五月色丁香| 男女男精品免费视频网站| 天天爽夜夜爽视频精品| 国产精品狼人久久久久影院| 中文字幕无码专区人妻制服| 玖玖资源站无码专区| 又污又黄又无遮挡的网站| 欧洲亚洲国产成人综合色婷婷| 欧洲极品无码一区二区三区 | 少妇饥渴xxhd麻豆xxhd骆驼| 久久精品国产一区二区三| 国产午夜高潮熟女精品av| 中日韩产精品1卡二卡三卡| 国产成人av三级在线观看按摩| 国产亚洲精aa在线观看| 国产成人精品精品日本亚洲| 医院人妻闷声隔着帘子被中出| 午夜精品久久久久久久久| 日韩人妻系列无码专区| 女人被强╳到高潮喷水在线观看| 老牛精品亚洲成av人片| 国产真实乱子伦精品视频| 护士奶头又大又软又好摸|