亲亲发出吧唧吧唧的声音,美国女子监狱,av 丝袜 欧美 老 另类 亚洲,国色天香久久久久久久小说

AI used to predict survival rates of patients with brain tumors

Source: Xinhua| 2018-03-14 04:56:33|Editor: yan
Video PlayerClose

WASHINGTON, March 13 (Xinhua) -- American researchers have developed an artificial intelligence (AI) software that can predict the survival rates of patients diagnosed with glioma, a deadly form of brain tumor, by examining data from tissue biopsies.

The approach, reported on Tuesday in the Proceedings of the National Academy of Sciences, is more accurate than the predictions of doctors who undergo years of highly-specialized training for the same purpose.

Gliomas are often fatal within two years of diagnosis, but some patients can survive for 10 years or more.

Therefore, predicting the course of a patient's disease at diagnosis is critical in selecting the right therapy and in helping patients and their families to plan their lives.

Doctors currently use a combination of genomic tests and microscopic examination of tissues to predict how a patient's disease will behave clinically or respond to therapy.

The reliable genomic testing cannot completely explain patient outcomes and microscopic examination is so subjective that different pathologists often providing different interpretations of the same case.

"There are large opportunities for more systematic and clinically meaningful data extraction using computational approaches," said Daniel J. Brat, the lead neuropathologist on the study, who began developing the software at the Winship Cancer Institute of Emory University.

The researchers used an approach called deep-learning to train the software to learn visual patterns associated with patient survival using microscopic images of brain tumor tissue samples.

When the software was trained using both images and genomic data, its predictions of how long patients survive beyond diagnosis were more accurate than those of human pathologists, according to researchers.

The researchers also demonstrated that the software learns to recognize many of the same structures and patterns in the tissues that pathologists use when performing their examinations.

The researchers are looking forward to future studies to evaluate whether the software can be used to improve outcomes for newly diagnosed patients.

TOP STORIES
EDITOR’S CHOICE
MOST VIEWED
EXPLORE XINHUANET
010020070750000000000000011105521370371691
主站蜘蛛池模板: 宜都市| 宜州市| 信阳市| 徐水县| 满洲里市| 胶南市| 仁寿县| 泽库县| 罗源县| 钟祥市| 民县| 耒阳市| 桂林市| 泸西县| 酒泉市| 永仁县| 河南省| 赣榆县| 武义县| 阿拉善右旗| 廊坊市| 吴桥县| 锦屏县| 汨罗市| 盐城市| 湟源县| 酒泉市| 咸丰县| 普陀区| 香河县| 乌鲁木齐市| 温泉县| 元谋县| 柘城县| 鹤岗市| 阜城县| 莱芜市| 剑川县| 诸城市| 阿克苏市| 庆元县|