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Algorithms & Theory , Big Data , Cybersecurity , Entertainment , Internet of Things , Manufacturing , Wireless

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A language for bioinformatics

With the vast growth of next-generation sequencing data, it’s hard to remember that in 1869 Friedrich Miescher isolated DNA for the first time using cells from nearby hospital bandages. Computational genomics has now ushered in a new era of precision medicine, helping find clinically relevant mutations, potential diagnostics for asthma, and precision-based, personalized medicine.

Forum examines promises and limits of AI in clinical medicine

The confluence of medicine and artificial intelligence stands to create truly high-performance, specialized care for patients, with enhanced precision diagnosis and personalized disease management. But to supercharge these systems we need massive amounts of personal health data, coupled with a delicate balance of privacy, transparency, and trust.

Removing health-care barriers and boundaries

MIT’s Amar Gupta and his wife Poonam were on a trip to Los Angeles in 2016 when she fell and broke both wrists. She was whisked by ambulance to a reputable hospital. But staff informed the couple that they couldn’t treat her there, nor could they find another local hospital that would do so. In the end, the couple was forced to take the hospital’s stunning advice: return to Boston for treatment.

Articles

A language for bioinformatics

With the vast growth of next-generation sequencing data, it’s hard to remember that in 1869 Friedrich Miescher isolated DNA for the first time using cells from nearby hospital bandages. Computational genomics has now ushered in a new era of precision medicine, helping find clinically relevant mutations, potential diagnostics for asthma, and precision-based, personalized medicine.

Forum examines promises and limits of AI in clinical medicine

The confluence of medicine and artificial intelligence stands to create truly high-performance, specialized care for patients, with enhanced precision diagnosis and personalized disease management. But to supercharge these systems we need massive amounts of personal health data, coupled with a delicate balance of privacy, transparency, and trust.

Removing health-care barriers and boundaries

MIT’s Amar Gupta and his wife Poonam were on a trip to Los Angeles in 2016 when she fell and broke both wrists. She was whisked by ambulance to a reputable hospital. But staff informed the couple that they couldn’t treat her there, nor could they find another local hospital that would do so. In the end, the couple was forced to take the hospital’s stunning advice: return to Boston for treatment.

Using machine learning to improve patient care

Doctors are often deluged by signals from charts, test results, and other metrics to keep track of. It can be difficult to integrate and monitor all of these data for multiple patients while making real-time treatment decisions, especially when data is documented inconsistently across hospitals. In a new pair of papers, researchers from MIT’s Computer Science and Artificial Intelligence Laboratory (CSAIL) explore ways for computers to help doctors make better medical decisions.

Computer system predicts products of chemical reactions

When organic chemists identify a useful chemical compound — a new drug, for instance — it’s up to chemical engineers to determine how to mass-produce it. There could be 100 different sequences of reactions that yield the same end product. But some of them use cheaper reagents and lower temperatures than others, and perhaps most importantly, some are much easier to run continuously, with technicians occasionally topping up reagents in different reaction chambers.

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