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Artificial Intelligence

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By BroadReach | Mike Miliard | 06:31 am | February 19, 2020
BroadReach Group Founding Partner Dr John Sargent spoke about the company’s approach at a HIMSS event in Cambridge last month.
By Bill Siwicki | 01:32 pm | February 18, 2020
The ultimate goals are to avoid penalties for non-compliance with state regulations; improve provider satisfaction, loyalty and recruitment measures; and increase patient satisfaction measures.
By Nathan Eddy | 11:53 am | February 18, 2020
AI is helping clinicians better predict and treat conditions such as surgical hypotension, and at HIMSS20 experts will show how more sophisticated future models could have even broader healthcare applications.
By Jonah Comstock | 08:00 am | February 18, 2020
The pilot showcases an approach to AI integration that keeps impact on the radiologist's workflow to a minimum.
By Dean Koh | 10:46 am | February 14, 2020
iThermo reduces the need for manual temperature screening, and provides prompts where secondary checks can be carried out for feverish persons identified by the solution.
By Bill Siwicki | 02:29 pm | February 13, 2020
A majority believe healthcare is ahead of other industries in AI adoption, but 37% say healthcare’s pace of AI implementation is too slow, according to the new KPMG report.
By Bill Siwicki | 01:34 pm | February 13, 2020
The EMS system supports real-time data transfer and two-way communication to empower clinical decision making on the move. The AI capabilities will provide “transformative change,” an exec says.
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By Verizon | Verizon | 10:45 am | February 13, 2020
5G holds much promise for healthcare organizations to support innovative clinical use cases and use of technologies, as well as to help deliver critical data where it’s needed. But in order to unlock the power of 5G, healthcare organizations need to address four areas as they build their 5G roadmap.
By Layla McCay | 05:25 am | February 12, 2020
The UK and the EU should 'work as one' to further the deployment of AI in healthcare, writes Dr Layla McCay, director of international relations at the NHS Confederation. 
By Dean Koh | 10:33 pm | February 11, 2020
A new study, conducted by Korean academic hospitals and Lunit, a medical AI company specializing in developing AI solutions for radiology and oncology, demonstrated the benefits of AI-aided breast cancer detection from mammography images. The study was published online on 6 February 2020, in Lancet Digital Health and features large-scale data of over 170,000 mammogram examinations from five institutions across South Korea, USA, and the UK, consisting of Asian and Caucasian female breast images. TOP FINDINGS One of the major findings showed that AI, in comparison to the radiologists, displayed better sensitivity in detecting cancer with mass (90% vs 78%) and distortion or asymmetry (90% vs 50%). The AI was better in the detection of T1 cancers, which is categorized as early-stage invasive cancer. AI detected 91% of T1 cancers and 87% of node-negative cancers, whereas the radiologist reader group detected 74% for both. Another finding was a significant improvement in the performance of radiologists, before and after using AI. According to the study, the AI alone showed 88.8% sensitivity in breast cancer detection, whereas radiologists alone showed 75.3%. When radiologists were aided by AI, the accuracy increased by 9.5% to 84.8%. An important factor in diagnosing mammograms is breast density and dense breast tissues, mostly from the Asian population, make it harder to interpret as dense tissue is more likely to mask cancers in mammograms. According to the study’s findings, the diagnostic performance of AI was less affected by breast density, whereas radiologists' performance was prone to density, showing higher sensitivity for fatty breasts at 79.2% compared to dense breasts at 73.8%. When aided by AI, the radiologists’ sensitivity when interpreting dense breasts increased by 11%. THE LARGER TREND Findings from a study published in Nature indicated that Google’s AI model spotted breast cancer in de-identified screening mammograms with greater accuracy, with fewer false positives and false negatives than experts, HealthCareITNews reported. Lunit recently raised a $26M Series C funding from Korean and Chinese investors, which the company said was its biggest funding round, according to a DealStreetAsia report in January.  ON THE RECORD “It is an unprecedented quantity of data with accurate ground truth--especially the 36,000 cancer cases, which is seven times larger than the usual number of datasets from resembling studies conducted previously,” said Hyo-Eun Kim, the first author of the study and Chief Product Officer at Lunit.  Prof. Eun-Kyung Kim, the corresponding author of the study and a breast radiologist at Yonsei University Severance Hospital, said: “One of the biggest problems in detecting malignant lesions from mammography images is that to reduce false negatives—missed cases—radiologists tend to increase recalls, casting a wider safety net, which brings an increased number of unnecessary biopsies.” “It requires extensive experience to correctly interpret breast images, and our study showed that AI can help find more breast cancer with lesser recalls, also detecting cancers in its early stage of development.”