How Philips is using AI
to transform healthcare
Philips Innovation Campus is using technologies
such as machine and deep learning, artificial intelligence technologies to help
in the early detection of diseases
Data
scientists have begun betting on the use of machine learning, deep learning,
Big Data and artificial intelligence (AI) technologies to help in the early
detection of diseases and advance healthcare. Leading the way on the road to
healthcare analytics are the world’s five largest medical device companies—Johnson
& Johnson, GE Healthcare, Siemens, Medtronic and Philips Healthcare.
In the case of
Dutch electronics, healthcare and lighting company, Philips NV, much of such
innovative work is being done at the Philips Innovation Campus (PIC) in
Bengaluru. PIC, according to the centre’s chief executive Srinivas Prasad,
initially started as a software centre in 1996, and has now developed into a
product engineering site with a focus on delivering innovations for local and
global markets.
“Engineers and
domain experts work on end-to-end products and solutions across the health
continuum, from healthy living, to prevention, diagnosis and treatment. PIC is
harnessing the power of technologies such as mobile, digital, cloud and Big
Data analytics to improve patient outcomes through care coordination and
patient empowerment. PIC takes pride in developing solutions to make healthcare
affordable and accessible in India and other growth geographies like Africa and
Indonesia,” said Prasad.
Philips, he added,
provides a data science development environment where data scientists can do
exploratory and predictive analysis on the data. The models thus created in
this environment can be put in production. About 40-50% of the employees at
this centre “focus on next-gen solutions”, according to Prasad.
Consider the case
of tuberculosis, or TB, which continues to plague developing nations. An
estimated 2.5 million people in India live with active TB, according to the
World Health Organization or WHO (bit.ly/2ieRxGh). Experts point out that
despite the availability of excellent treatment options, the mortality rate for
patients in many countries is high due to delayed diagnosis and
non-availability of qualified radiologists.
Algorithms to
the aid
Given this
context, Philips realized the need for an automatic screening solution based on
deep learning algorithms with high specificity (that can capture almost all TB
cases) rather than sensitivity (low false positives), according to Vijayananda,
fellow architect (analytics) at PIC.
Data scientists
are provided access to all kinds of data for analysis and creating models—data
that represents time series and longitudinal record of the patient such as lab
reports, scanned images, electronic medical records, lifestyle data, etc. This
provides holistic information about the patient, which is very useful
especially in recommending treatments. Using such data points, Philips has been
able to develop a solution for TB detection from chest X-rays.
“Since chest X-ray
is used for screening for TB, there was a need for an automatic solution to
detect TB. The solution should help reduce the workload of radiologists and
make their work less subjective. It should be possible that given a set of
chest X-rays (generated from a scanner from any vendor), the algorithm would
detect if there are traces of TB present in the image,” explains Vijayananda.
The solution
learns TB-specific features from the images which are unique in chest X-rays
using deep learning techniques, and then uses machine learning algorithms to
generate classifier models that can distinguish a chest X-ray that contains TB
traces from normal ones. “This means that abstracted set of techniques can be
developed, which are capable enough to train a model to detect abnormality in
clinical images, given a set of labelled data, in any specific area/disease,”
adds Vijayananda.
Philips has its FlexCare Platinum Connected solution that
has built-in sensors on the brushhead that send the brushing data to the
Sonicare app via Bluetooth wireless technology.
The Philips Mobile
Obstetrics Monitoring (MOM) software solution is another case in point. The
solution is aimed at helping community caregivers and doctors work together to
identify and manage high-risk pregnancies, bringing care to where it’s urgently
needed: primary health centres and patient homes. MOM features a way for
community caregivers to capture vital information so that a clinical decision
support (CDS) pregnancy risk level can be calculated, according to Ankur Kaul,
product and marketing manager (hospital to home business) at PIC. This helps
standardize pregnancy risk stratification so that high-risk cases are not
missed. Mobile applications connect a doctor, caregiver and patient for
diagnostic assistance and progress assessment.
The CDS algorithm in MOM
is an AI tool that takes into consideration various parameters from the
pregnant woman’s obstetrics history, antenatal examination, ultrasound/blood
investigations and comes up with a pregnancy risk score and risk level for the
woman. “The algorithm is fairly comprehensive taking into account 28 different
pregnancy parameters to compute a pregnancy risk score and level. The output of
the algorithm is to classify a pregnancy as a low, medium or a high-risk pregnancy.
Based on this classification the caregivers can then take critical decisions
like referring all high-risk pregnancies to a larger hospital or a specialist.
This ensures that a meaningful intervention is made early to address pregnancy
complications,” explained Kaul.
AI technologies take
centre stage
This approach is in line
with the growing trend of AI applications across different industries including
healthcare. The use of AI becomes particularly important for healthcare
solutions in low-resourced settings as typically the users tend to be minimally
trained and not specialists. The availability of such AI-based solutions makes
it easier for the users to ascertain the risk correctly and ensures that
chances of missing high-risk factors are significantly reduced. Such solutions
complement the medical expertise on the ground in delivering more robust care
to the patients.
Prasad points out that
with the Philips IntelliSpace Consultative Critical Care, for instance,
hospitals can now monitor multiple intensive care units (ICUs) from a central
command centre that may be located in a geographically-separated area. Trained
intensivists and intensive care nurses stationed at the command centre can
monitor the patients in the peripheral ICUs throughout the day and night.
Each monitoring station
has a high-end computer system connected to an array of high resolution
computer monitors. Clinical data (coming in from monitors /ventilators/infusion
pumps) of patients admitted to the peripheral ICUs is displayed on a dashboard,
enabling continuous monitoring of vital data and lab values. In addition, there
is a near-real time display of the wave forms coming in from the patient’s
bedside monitors and an ability to start a two-way audio-video conference with
the care provider (doctor/nurse).
According to Prasad, PIC
now has five command centres that are functional and cover 1,500 ICU beds
located in various small towns across the country.
Dr Amit Varma, executive
director (CritiNext) at Fortis Escorts Heart Institute, Delhi, who has
partnered with Philips and GE Healthcare for the same, strongly believes in the
importance of this innovation. “If you do not intervene at the right time, the
patient is going to end up with a lot of damage,” he says.
Internet of Things
Prasad also points out
that many of PIC’s innovations centre around the “connectedness of the
healthcare ecosystem, which is broadly the Internet of Things (IoT)”.
The Philips HealthSuite
Digital platform, for instance, is supported by Salesforce.com, and is an open,
cloud-based platform which collects, compiles and analyses clinical and other
data from multiple devices and sources. “The direct benefit to the Indian
healthcare system could be by connecting all the primary, secondary and
tertiary healthcare centres with the data relating to patients hosted on the
cloud. This will help reduce the upfront investment and the operational cost,
and also will provide a gateway to leverage telemedicine,” said Prasad.
The Philips IntelliSpace
Consultative Critical Care solution can monitor multiple ICUs from a central
command centre that may be in a different location.
For consumers,
Philips has its FlexCare Platinum Connected solution that has built-in sensors
on the brushhead that send the brushing data to the Sonicare app via Bluetooth
wireless technology, “providing you personalized coaching with real-time
guidance and feedback for the most complete clean possible”. The app monitors a
user’s brushing habits and helps the user correct behaviours such as brushing
too hard, scrubbing, identify the missed brushing spots, etc. The app lets you
define the goals for your oral health. Then after each brushing session, it
reminds the user to take appropriate action such as using mouthwash or using
the tongue cleaner, etc.
Another solution
is called “uGrow”, which Prasad touts as the “world’s first medical baby app
with connected devices giving personal advice that matters ”. With an
interactive timeline at its heart, the uGrow baby app and smart connected
products work together to collect data and provide personalized guidance that
supports the healthy development of the baby.
Next gen
start-ups are helping the cause
The global
ultrasound devices market, according to a 10 August release by research firm
Mordor Intelligence, was valued at $3,216 million in 2015. The market is
forecast to touch $3,860 million by 2021. The five largest medical device
companies—Johnson & Johnson, GE Healthcare, Siemens, Medtronic and Philips
Healthcare (ranked in hierarchical order)—accounted for 28% of the global
medical devices sales, according to a
2015 report from
the US Congressional Research Service. The next five firms accounted for 13% of
global sales: Abbott Labs, Covidien, Boston Scientific, Becton Dickinson and
Stryker.
Further, all these
companies have invested heavily in AI technologies to advance healthcare.
In April, 2016, Johnson & Johnson and International Business Machines
Corp.’s (IBM) Watson Health unit said they will partner to use advanced data analysis and
insights to help develop personalized patient engagement and coaching solutions
that span consumer wellness and chronic condition management. Through the
collaboration, Johnson & Johnson said it will also leverage IBM’s
relationship with Apple Inc. to deliver new iPhone and iPad applications.
In November 2016,
UC San Francisco’s Center for Digital Health Innovation and GE Healthcare
announced a partnership to develop a library of deep learning
algorithms to
empower clinicians to make faster and more effective decisions about the
diagnosis and management of patients with some of the most common and complex
medical conditions.
The first wave of
algorithms, according to the release, aims to expedite differential diagnosis
in acute situations such as trauma, to speed treatment, improve survival and
reduce complications. “These algorithms are to be deployed worldwide via the GE
Health Cloud and smart GE imaging machines, sharing the research of health care
leaders with clinicians around the world who have varied expertise,” said the
release.
That very month,
GE Healthcare also announced the launch of 25 new products, services and
digital solutions at RSNA 2016.
On 9 January, IBM
announced that it broke the US patent record with 8,088 patents granted to its
inventors in 2016. IBM’s 2016 patent output covers a diverse range of
inventions in AI and cognitive computing, cognitive health, cloud and
cybersecurity.
Even start-ups are contributing in a very significant way
to advancing healthcare with
next-gen solutions, sometimes independently and, at other times, with
partnerships with the leading medical device companies.
Research firm CB
Insights has identified over 90 companies that are applying machine learning
algorithms and predictive analytics to reduce drug discovery times, provide
virtual assistance to patients, and diagnose ailments by processing medical
images, among other things, according to a 30 August 2016 blog.
According to a
survey conducted by McKinsey, India has just 1.3 hospital beds per 1,000
people—significantly lower than the guideline of 3.5 beds defined by WHO.
According to a World Bank Report, in 2011, India’s doctor-to-patient ratio,
too, was a mere 0.7 per 1000 population. India needs an additional 1.5 million
beds and three million doctors by 2034, to be able to render effective
healthcare to the ones in need, notes Prasad, concluding, “IoT combined with AI
will address some of these issues.”
At a glance
—The PIC campus is spread across 386,000
sq. ft.
—Over 2,000
people comprising engineers, doctors, researchers, data scientists and software
developers work on the campus
—It is the
R&D centre for Philips businesses: Imaging systems—CT (computed
tomography), MR (magnetic resonance), Ultrasound, Interventional X-ray,
Diagnostic X-ray, Healthcare Informatics, Hospital to Home Care, Critical care,
Clinical Applications and Healthcare Transformation Services.
—PIC also
has a Digital Accelerator Lab: with the goal of accelerating internal
innovation, the digital accelerator defines and validates the next-generation
of breakthrough digital propositions that can help tackle the world’s biggest
healthcare challenges. The team at Philips is involved in artificial
intelligence healthcare applications, blockchain, analytics, etc.
—Philips’s
IP (intellectual property) portfolio currently consists of 71,000 patent
rights, 47,000 trademarks, 92,000 design rights and 4,900 domain names.
—Philips is
among the top five patent filers in India for the last two years.
Source | Mint | 16
February 2017
Regards!
Librarian
Rizvi Institute of
Management
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