There have been many cases
of misdiagnosis in Kenya. The Kenya Medical Practitioners and Dentists
Board blames machines for these cases. However, this is misleading since
machines do not interpret the results. This is the role of medical
personnel. Ironically, machines powered by Artificial Intelligence (AI)
are learning fast and becoming so clever that it will be easier for
medics to make more accurate decisions.
Last week, I
had the privilege of attending a Google AI Workshop, Making AI, in the
Netherlands where experts discussed how to leverage AI to lower cases of
misdiagnosis. The good news from the workshop is that advances in AI
are narrowing the knowledge gap between what medics know and what they
should know.
Although AI is destined to disrupt
virtually every sector, there is a more compelling case to leverage AI
in medicine. Every medical facility has tons of records, which, if
digitised, will help machines to make accurate assessment of disease
patterns.
Such patterns are perhaps what the medics
need most for diagnosis, prognosis and prescription. It must be noted
that machine ability to learn from millions of data sets is something no
human can do. It brings years of experience into the hands of medics
enabling them to focus on patient treatment.
This,
however, is necessary to assist medics especially in places where the
ratio of doctors to patients is high, to make decisions that would
otherwise take several days if not months. AI is, therefore, likely to
help developing countries leapfrog several years into modern quality
healthcare.
This cannot be realised if we cannot, for
example, facilitate AI research in order to tackle barriers to
implementation. There is need to develop legal sandboxes to help test
the application of AI. We have nothing to lose other than helping to
stimulate the uptake of AI within priority sectors like healthcare.
Diagnostic
areas such as a medical laboratory would perhaps experience the
greatest transformation of AI and improve the quality of care. Greater
impact will be felt in countries that understand the disruptiveness of
AI and work towards encouraging responsible data sharing to boost data
availability for training AI systems.
For instance, we
cannot minimize Malaria/Typhoid misdiagnosis if we cannot digitise data
from all of our health facilities and analyze it to build new knowledge
on the treatment of these diseases. Even as we seek to leverage AI to
solve many problems there are security concerns that that might fall
into wrong hands, or that it might be used unethically. It is possible
that human biases can be hardcoded into AI decisions, such as
systemising inequality or infringement of individual liberties.
There have been cases of blackmail from people who acquire
others’ data. It is for such incidences that governments should promote
constructive governance frameworks and build capacity within oversight
agencies.
Since innovation precedes regulation,
governments should take the leadership role in showcasing how such
emerging technologies can be used responsibly. Most of the health
facilities in developing countries still fall within the public sector.
That
they can become an example of responsible AI use while at the same time
giving knowledge to oversight agencies on what best practices they can
use to regulate new innovations.In this era of rapid technological
changes, there is need to develop a set of principles that can help
guide use of transformative applications especially in saving lives
while protecting citizens from those who use the same technologies for
malicious purposes.
Data protection is critically
important at this stage when the entire world has realised that it is
the oil of the future. Data is the main tool for building predictive
models from diseases to weather patterns.Data is the future of our lives
but as it is at the moment, there isn’t a clear policy guideline on how
individual data can be used for a common good. AI presents a profound
and promising prospect for improved healthcare provision.
Rather
than rubbish this emerging technology as a passing cloud, and going by
the emerging research outcomes, we must give it a chance in order to
understand it better through indepth research.
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