Voice AI Redefines The Future Of Patient Interactions

Voice AI Redefines The Future Of Patient Interactions

Voice AI is significantly one of the most promising implementations in the healthcare sector. It works as a transformational tool that redefines the traditional process of making prescriptions, connecting, and engaging with the patients.

In the past decade, the fundamental structure of healthcare management has changed radically. The industry has become more consumer-driven with a focus on providing personalised patient care. On the other hand, the pressure on healthcare delivery due to the outbreak of the COVID-19 pandemic is exploding. The exacerbating impact of the crises has resulted in a new set of challenges for the industry. However, the healthcare infrastructure is strengthening steadily with digital innovations that will have an indescribable impact on patient outcomes.

With automated processes, Artificial Intelligence is paving the way for technologically advanced healthcare space. Many healthcare practitioners are embracing the potential of AI in delivering more responsive and personalised care to their patients. It disrupts the conventional approach of delivering medical treatments to simplify the lives of doctors, patients, and hospitals.

One of the biggest trends is image recognition-based diagnostics that ensures accuracy and accessibility in identifying the disease, and plan the medical treatment while creating cost and time efficiency. Furthermore, by integrating deep learning, AI also helps in detecting cancer more accurately. The implementation of AI is beyond diagnostics which transforms the delivery approach through smart EMR based clinical support to manage medical records to creating digital prescriptions through Voice AI.

opinions covid-19 voice ai voice ai voice ai patient ai

Bootstrap 5 Complete Course with Examples

Bootstrap 5 Tutorial - Bootstrap 5 Crash Course for Beginners

Nest.JS Tutorial for Beginners

Hello Vue 3: A First Look at Vue 3 and the Composition API

Building a simple Applications with Vue 3

Deno Crash Course: Explore Deno and Create a full REST API with Deno

How to Build a Real-time Chat App with Deno and WebSockets

Convert HTML to Markdown Online

HTML entity encoder decoder Online

How The New AI Model For Rapid COVID-19 Screening Works?

How The New AI Model For Rapid COVID-19 Screening Works?. The Oxford researchers revealed the two AI models and highlighted its effectiveness in screening the virus in patients.

Karnataka Govt. Launches AI-Driven Movable Hospitals To Treat COVID-19 Patients

Karnataka Government recently announced the launch of AI-driven movable hospital to treat COVID-19 patients. Karnataka Government recently announced the launch of AI-driven movable hospital to treat COVID-19 patients. It has been done in an effort to contain the spread of the virus in the state. Called the Vevra Pods, these are movable capsules that are infused with artificial intelligence to prevent the spread of contagious diseases such as COVID-19, flu, TB and more.

The Impact of the Covid-19 Pandemic on Conversational AI

The Impact of the Covid-19 Pandemic on Conversational AI. Companies are accelerating their digital transformation strategies in response to the Covid-19 pandemic and relying on Conversational AI to stay competitive.

Has COVID-19 Had An Effect On Enterprise AI Adoption?

COVID-19 has impacted businesses of all shapes, putting on hold many projects and upgrades. A new study looks into the pandemic's effect on AI adoption. In the current pandemic, AI models are experiencing unique levels of traffic and interest. The coronavirus pandemic has brought many industries to a halt, with businesses reducing hours, sacking employees, and halting new projects. Artificial intelligence projects could definitely fall into the dispensable category, but that’s not the case according to a recent report from FICO and the market intelligence firm Corinium.

How to make AI/Machine Learning models resilient during COVID-19 crisis

COVID-19-driven concept shift has created concern over the usage of AI/ML to continue to drive business value following cases of inaccurate outputs and misleading results from a variety of fields. Data Science teams must invest effort in post-model tracking and management as well as deploy an agility in the AI/ML…