How AI-led Quality Assurance can drive the quality of Healthcare Apps
Digital technology has touched every conceivable sector of the economy
including healthcare. The multiplicity of healthcare apps doing the rounds is a
testimony to the technological advancements made by the digital ecosystem in
enabling attributes such as ease of access, convenience, and
cost-effectiveness. If the pandemic can be a yardstick to measure the success
of such apps then one cannot but agree that these did help innumerable patients
in reaching out to the doctors or paramedics and get treated. When social
distancing has been the norm, more so during the lockdown phase, healthcare
apps came as a beacon of hope and convenience for a large number of people,
including senior citizens.
Since healthcare apps collect vital health parameters of patients such
as blood pressure, heart rate, etc., their accuracy of results is of paramount
importance. Imagine a scenario where a patient has a surging blood pressure but
the wearable app does not show any alert but gives the impression that
everything is normal. This may delude the patient into believing that nothing
is wrong with them leading to a sudden fatal medical condition like a stroke or
heart attack. Had the wearable device shown accurate results, the patient (or
others around them) could have taken a timely call of consulting a physician
and start the much-needed treatment. This instance shows how the quality of a
healthcare app is so important in saving the life of a patient. Healthcare
app testing should be an integral and critical part of the SDLC
wherein every aspect of the app ought to be validated against set parameters.
Role of Artificial Intelligence (AI) in Quality Assurance of Healthcare Apps
Healthcare apps generate a huge amount of data by reading the vital
parameters of a patient for processing. The accurate and comprehensive
processing of the data by the app is critical for the patient’s family to
arrive at the right decision of seeking medical help. Taking such a quick and
accurate data-driven decision is possible with AI as the technology can examine
a huge quantum of data quickly to gather accurate and deep insights. AI can
help the healthcare app makers to optimize performance, improve resource
utilization, increase productivity, and cost-efficiency.
The healthcare ecosystem is slowly but steadily incorporating AI-powered
tools to enhance the quality of healthcare management. Artificial
Intelligence in healthcare can lead to significant cost reductions
arising out of fewer hospitalizations, infrequent doctor visits, and less
treatment. AI-based healthcare apps can help people to stay healthy by continuously
monitoring the vital health parameters and offering early diagnosis, efficient
follow-ups, and tailored treatments. In fact, the AI-driven global healthcare
market is expected to touch USD 13 billion by 2025 (Source: wired.com.) Let us
understand the need for AI-led quality assurance.
AI-powered chatbots: Juniper Research
states that chatbots are likely to save around $ 11 billion per annum by 2023
(https://www.juniperresearch.com/press/press-releases/chatbots-to-deliver-11bn-cost-savings-2023)
for many sectors including healthcare. Chatbots can ensure quick resolution of
queries and entail huge cost savings. For example, chatbots can allow doctors
to diagnose the ailments of patients and suggest treatment. This is done by
asking the patients to choose an option from a predefined set of options.
Juniper Research also claims that chatbot interactions without human
interventions shall rise to 75% in 2022. Applications of AI in healthcare will aid in the learning process
of a chatbot by accumulating and analyzing the series of questions and answers
received by the chatbot solution.
Aid in automated testing: Testing of every
healthcare app involves activities such as manual testing, automated testing,
and non-functional testing. Artificial
Intelligence in healthcare app testing can auto explore the apps on real
devices to ensure the functionalities and navigation are working normally. This
way, AI can identify any bugs or glitches in the app. The AI-driven tools can
be leveraged by the healthcare app testing teams to supplement their
testing efforts. AI also helps QA to conduct fast-paced testing by covering a wide
scope with precision.
Saving time: When the race to remain competitive entails
developing and delivering a greater number of healthcare apps within short
turnarounds, AI can come to the aid. AI-based tools can ensure the execution of
some routine tasks in healthcare
software testing and free up the time of testers. The free time can be utilized
by QA specialists to conduct exploratory testing thereby speeding up the
release of apps.
Conclusion
The use of AI has the potential to revolutionize the healthcare sector
through increased automation and data analytics. Its role in healthcare
domain testing in terms of streamlining the workflow, identifying
outliers, and speeding up the delivery of apps is likely to grow.
Resource
James Daniel is a
software Tech enthusiastic & works at Cigniti Technologies. I'm having a
great understanding of today's software testing quality that yields strong
results and always happy to create valuable content & share thoughts.
Article Source: medium.com

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