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考研阅读精选:如何准确诊断癌症?

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发表于 2017-8-5 22:03:20 | 显示全部楼层 |阅读模式
『通过使用编制的计算机程序,医生可以准确无误的确诊癌症。』
Indolent or aggressive?
如何准确诊断癌症?

Nov 8th, 2011 | from The Economist

  LOOKING for needles in haystacks is boring. But computers do not get  bored. Contracting out to machines the tedious business of assessing the  dangerousness of cancer cells in histological microscope slides ought  thus to be an obvious thing to do. Cervical-cancer smear tests aside,  however, such electronic intrusions into the pathology laboratory are  limited. Grading cancer cells into “indolent” and “aggressive”, and  hazarding an opinion about whether they spell a treatable condition or  an untreatable one, has remained the realm of the human expert. But not  for much longer, if Daphne Koller, a computer scientist at Stanford  University, and her colleagues have their way. They report in this  week’s Science Translational Medicine that they have written a program  which can distinguish between grades of breast-cancer cell—and can do so  in a way that provides a more accurate prognosis than a human  pathologist can manage.
Previous attempts to build a  computerised pathologist of this sort involved the designers carefully  specifying which characteristics of the samples being examined were most  important. For example, they would tell the computer to measure the  three traits human pathologists use to determine a tumour’s grade: the  percentage of its cells that are tubelike; the diversity of appearance  of the cell nuclei; and the proportion of cancer cells undergoing  division. However, people are excellent at pattern recognition and  skilled pathologists rely not just on these relatively-easy-to-describe  traits, but also on less well defined characters that years of  experience have taught them are significant too. Restricting  computerised pathologists to the well-characterised bits of the process  therefore inevitably results in worse performance than their human  counterparts show.
Dr Koller’s Computational Pathologist  (C-Path), by contrast, lets the system work out for itself what the most  important features of a tumour are. She and her colleagues started by  setting down 6,642 characters the program might choose from when it  assessed images of biopsies from breast-cancer patients, but did not  tell it which to prefer. Some of the characters they offered were  inherent to the cancer cells. Others were features of the surrounding  “stromal” cells, which are not, themselves, malignant, but act to  support a tumour. And some were not features of individual cells at all  but, rather, measured relations between cells (for example, the average  distance between cancer-cell nuclei) and the context cells found  themselves in (for example, whether they occurred in large clusters or  were frequently interspersed with stroma).
The team  initially trained and tested the program on 248 breast-cancer samples  from the Netherlands Cancer Institute. It was fed with images of slides  from these patients, and also information on how long each patient had  survived after the sample being examined had been taken. That done, they  then tested it on a second set of samples, this time from 286  breast-cancer patients at Vancouver General Hospital. They found it was  able both to grade the slides and to predict—in a way human pathologists  could not—whether patient would survive for five years after treatment.  
When Dr Koller looked at which 11 features were the most  robust predictors of survival, she discovered that only eight were  characteristic of the tumour cells themselves. The other three were  stromal characters. The fact that three stromal features were on the  list suggests that the stroma influences whether or not a cancer  progresses and kills the patient. That is important information because,  hitherto, pathologists have focused on the cancer cells themselves and  ignored the stroma. Thus C-Path seems not only to outperform human  pathologists, but also to have something to teach them about cancer  biology. (592 words)
文章地址:http://www.economist.com/blogs/babbage/2011/11/diagnosing-cancer
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