@ShahidNShah
Cardiac arrest (CA), characterized by an extremely high mortality rate, remains one of the most pressing global public health challenges. It not only causes a substantial strain on health care systems but also severely impacts individual health outcomes. Clinical evidence demonstrates that early identification of CA significantly reduced the mortality rate. However, the developed CA prediction models exhibit limitations such as low sensitivity and high false alarm rates. Moreover, issues with model generalization remain insufficiently addressed.
A deep learning model using routinely collected vital signs can accurately predict cardiac arrest up to an hour before it happens, offering high sensitivity and low false alarms compared with traditional methods. This approach shows strong generalizability across clinical datasets and could support earlier intervention to improve patient survival.
Continue reading at formative.jmir.org
The World Health Organization reported that noncommunicable diseases (NCDs) contribute to around 74% of deaths worldwide. A similar phenomenon can also be observed in Brunei Darussalam. One of the …
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