Submitted by adityyya13 t3_11k4qzs in MachineLearning
With increasing research and technological innovation in the Machine Learning and Deep Learning Domain, how will healthcare be impacted.
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If adequate and competent datasets are available for symptoms, signs and management of common and well studied diseases like Tuberculosis and Diabetes along with their complications, whats stopping AI from replacing or atleast relieving physicians at Primary Healthcare Setups. Statistics about these diseases in context to social and vertical(age) demography could be fed and treatment would be on the basis of guidelines.
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How hard is to process non radiological data like heart murmurs, visible body anomalies like ulcers, grading of pain, dyspnea, fatigue into well set parameters to be fed into a machine.
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Since the software can be centralized, shouldn't deployment of various AI modalities be widespread since only input devices will be required for investigations and the output will be generated after cloud processing.
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How far are we from solving data aggregation problems like noise reduction, input heterogenity and labeling bias?
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If regulatory and "human touch" aspects of medicine are to be hypothetically ignored, Is it possible to replace physicians with AI systems and midlevels in next few decades.
pitcher_slayer7 t1_jb5vong wrote
One of the largest problems so far in health care is the most important thing in regards to AI/ML. Data. Yes, electronic health records now exist which is a huge step up from the paper charting of the not so distant past. However, the large EHR companies have multiple inputs for data that are not easily accessible and often times in multiple different forms. A lot of times, the necessary and clinically relevant information is not in a check-box or numerical format, but is free-text with myriad ways of describing a feature that may be hard to quantify. Additionally, often times the purpose behind charting, or put in AI/ML terms “collecting and transcribing data,” is for billing purposes, which further complicates the problem of having good data. My $0.02 is that ML methods like NLP will become more useful for chart digging purposes and trying to collect and organize data in meaningful ways. Most of a physician’s time now is currently spent charting, so the most likely applications of AI/ML will be in automating annoying tasks that physicians do not like to do in the first place. What will happen is that physicians that do not incorporate AI/ML in the future will be replaced by physicians that do use AI/ML to augment their clinical decision-making. Medicine, in my opinion, is a field in which physicians will continue to be people for the long-term future.