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Smart software can diagnose prostate cancer as well as a pathologist

Press releases may be edited for formatting or style | March 16, 2018 Pathology Health IT Rad Oncology
Copenhagen: Chinese scientists and clinicians have developed a learning artificial intelligence system which can diagnose and identify cancerous prostate samples as accurately as any pathologist. This holds out the possibility of streamlining and eliminating variation in the process of cancer diagnosis. It may also help overcome any local shortage of trained pathologists. In the longer term it may lead to automated or partially-automated prostate cancer diagnosis.

Prostate cancer is the most common male cancer, with around 1.1m diagnoses ever year, worldwide1 (for comparison, that's around x4 the number of men who live in Copenhagen). Confirmation of the diagnosis normally requires a biopsy sample, which is then examined by a pathologist. Now an artificial intelligence learning system, presented at the European Association of Urology congress in Copenhagen, has shown similar levels of accuracy to a human pathologist. In addition, the software can accurately classify the level of malignancy of the cancer, so eliminating the variability which can creep into human diagnosis.

"This is not going to replace a human pathologist" said research leader Hongqian Guo (Nanjing, China), "We still need an experienced pathologist to take responsibility for the final diagnosis. What it will do is help pathologists make better, faster diagnosis, as well as eliminating the day-to-day variation in judgement which can creep into human evaluations".

Prof. Guo's group took 918 prostate whole mount pathology section samples from 283 patients, and ran these through the analysis system, with the software gradually learning and improving diagnosis. These pathology images were subdivided into 40,000 smaller samples; 30,000 of these samples were used to 'train' the software, the remaining 10,000 were used to test accuracy - the results showed an accurate diagnosis in 99.38% of cases (using a human pathologist as a 'gold standard'), which is effectively as accurate as the human pathologist. They were also able to identify different Gleason Grades in the pathology sections using AI; ten whole mount prostate pathology sections have been tested so far, with similar Gleason Grade in the AI and human pathologist's diagnosis. The group has not started testing the system with human patients.

Prof. Guo continued "The system was programmed to learn and gradually improve how it interpreted the samples. Our result show that the diagnosis the AI reported was at a level comparable to that of a pathologist. Furthermore, it could accurately classify the malignant levels of prostate cancer. Until now, automated systems have had limited clinical value, but we believe this is the first automated work to offer an accurate reporting and diagnosis of prostate cancer. In the short-term, this can offer a faster throughput, plus a greater consistency in cancer diagnosis from pathologist to pathologist, hospital to hospital, country to country.

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