Socio-technology Plan for Smart-home Healthcare Integration
CS875 – Individual Project 5
John Brower
Colorado Technical University
Socio-technology
Plan Introduction
In 1950 Isaac Asimov published the
Three Laws of Robotic in I, Robot (Rotenberg, 2021). Asimov correctly
identified the challenges associated with technology integration with
humanities culture. The adoption of innovative technology requires careful
planning when integrating machines into the human experience. The
socio-technology plan facilitates the blending of devices with the intent of
improving lives. While Asimov's laws are insightful, a more helpful guide to
technology integration is the ethics associated with the safety and security of
the adopted technologies.
As the population ages, the current
expense of healthcare is unsustainable and requires innovative solutions to
ensure the quality of life and efficient delivery of care (Hosseini, 2015). The reality
healthcare faces are the need to care for chronic conditions associated with
advanced age. Management of chronic health conditions occurs outside of the
hospital, but many individuals experience a health crisis due to the lack of
observation and timely intervention. Adopting innovative technologies within
the home can prevent hospitalization and mortality through early detection and
intervention (Thompson et al., 2020).
Scope
There are three primary areas of
focus needed for a smart home: monitoring devices, communications, and data
analysis. Many technologies are available on the market that gathers biometric
data, such as wearable smart devices, smart scales, and various diabetic
monitoring aids. The sensitivity of the smart devices improved over time and
now provides highly reliable information (Bell, 2019).
The second area of concern is the
transmission of information. The Internet of Things is a highly adaptable
network integrating devices with services all over the globe. Simply stated,
the vastness of the web defies national borders and makes possible the exchange
of large quantities of data (Marakhimov & Joo, 2017). The Fast Healthcare
Interoperability Resources or FHIR standard provides a mechanism to securely
transmit information through the web (Hong et al., 2020). Image
1 outlines the integration of in-home monitoring using FHIR and healthcare
services
Image 1. In-home health integration monitoring technology
The final objective is information analysis
and timely response to prevent a health crisis. Biometric data is highly
dimensional that complicates the study of information. Machine learning
algorithms offer the most suitable mechanism to evaluate the generated data.
The legal questions regarding the
protection of healthcare providers are the most significant obstacle in
adopting innovative home technologies (Kun-Hsing et al., 2018). The
current market places the burden of gathering and analyzing data on the device
owner. However, there are few mechanisms in place to evaluate data
automatically and provide feedback. I believe a logical place to evaluate data
and provide intervention is with the patient's provider. However, very few
healthcare providers will accept that responsibility without legal protections
and appropriate funding.
Purpose
In the United States, the inpatient
occupancy rate averages 65.9% of the available beds (Ravaghi et al., 2020). Yet, despite the
generous hospital capacity, the cost of care increases annually (Crowley et al., 2020). As a
result, the federal government and health care organizations struggle to find
ways of containing costs. A way to achieve that objective is to prevent
expensive inpatient services with electronic monitoring and timely
intervention.
Supporting
Forces
The primary supporting factor is
financial. Image 2 uses data published by Macroeconomic Advisor and the
relationship between healthcare costs compared to the rest of the American
economy. The increasing cost of providing services is growing beyond our
economy's capacity to pay for care. Many reasons exist that contribute to cost
escalation, including the ever-increasing medication costs (Currin, 2020) and expensive
in-hospital diagnostics and medical staff care.
Image 2. Comparison between Healthcare costs and the GDP
The technological advances in
computing science and the decreasing cost of electronics open the door to
in-home monitoring. In addition, Healthcare professional's and patient's trust
in the technology has increased over time as device reliability and accuracy
improved (Chandra & Skinner, 2011). While the adoption of
in-home monitoring does not directly reduce pharmaceutical costs, the early
detection of illness may enhance the effectiveness of less costly medications
and avoid the need for expensive hospital services.
Challenging
Forces
The political realities of
healthcare are very complex. On the one hand, you have the single payor crowd,
and the other side is the free-market economists. The tug of war between the
two opposing forces is about the control of costs. The Centers for Medicare and
Medicaid Services or CMS manages the largest payor of healthcare in the nation
and exerts enormous influence over care providers. Through this influence, CMS promotes
practices and behaviors, including adopting technologies such as FHIR that
contribute to cost reductions ("HHS Finalizes Historic Rules to Provide
Patients More Control of Their Health Data," 2020). However, CMS and the
political institution show little interesting in funding the movement of
services from hospitals to homes (Cai et al., 2020).
Another challenge is the healthcare
provider's acceptance of responsibility to act on the biometric information. Many
providers cite malpractice lawsuits as a reason to reject the adoption of
in-home monitoring (Sharma et al., 2019). Finally, customers
expect information sent to the provider to be acted upon by the provider, and
the provider expects compensation in return for those services.
Methods
The best method to address the
complexities of in-home monitoring is the divide and conquer approach. The
structured design process breaks a big problem into simpler challenges that
have straightforward solutions. The discipline of Systems Engineering requires
systems to have a functional purpose and operational objectives. Adopting a
structured design process provides a model for the system engineer to identify
the separate systems and resources needed to achieve the purpose and objectives
(Blanchard & Fabrycky, 2011).
Individual Project 5
Models
The use of socio-technology systems
in healthcare informatics typically involves integrating hardware and software,
clinical content, human-computer interface, workflow and communication,
organizational business rules, regulatory concerns, and monitoring and
measurement (Sittig & Singh, 2010).
Historically, there are several models used in the development of healthcare
technology integration: Roger's diffusion of innovations theory (Sahin, 2006), Venkatesh's unified
theory of acceptance and use of technology (Baishya & Samalia, 2020), Hutchin's theory of
distributed cognition (Hollan et al., 2000), and Norman's 7 step
human computers interaction model (Dubberly et al., 2009). Image 1 outlines the
systems integration models, and image 3 outlines the socio-technology model
based on Norman's 7 step model.
Image 3. Adapted from Norman's 7-step socio-technology
integration model
Analytical
Plan
The integration incorporates
elements that commercially exist, such as wearable smart devices and electronic
medical records, with the ultimate goal of decreasing inpatient hospitalization
and reduction in medical costs by detecting health deterioration before patient
observed symptoms. The analysis does not focus on monetary objectives despite
that as a stated goal. Instead, the analytics focuses on the system's
performance and the detection and follow-up of clinically significant changes
in biometric measurements. The below list identifies four measurable goals that
determine success.
·
Measure the number of inpatient days before and
after implementation for participating audience
·
Determine algorithm efficiencies in the
identification of health changes by identifying true positives vs. false
negatives
·
Determine algorithm efficiency in the analysis
of high dimensional data
·
Identity provider follow-ups for
algorithm-generated positive results (both true and false)
Anticipated
Results
In 2013 Colin Powell argued in an
opinion article that healthcare needed to change how the community delivers
unscheduled care. The specific argument challenges the number of provider
referrals to emergency rooms and identifies the 28% increase in emergency room
visits. He further argues many of those visits are unnecessary due to the
non-critical discharge diagnosis (Powell, 2013). Recently, United
Health Care announced a plan to deny claims for emergency room visits they deem
unnecessary (Freeman, 2021). Both of these points
address the industry's concern with escalating costs. In addition, implementing
this technology may identify changes in health before costly hospital visits
and proactively direct the patient to a lesser level of care.
Conclusion
Computing technology inundates many
segments of the American community. While some may argue unequal distribution
between communities based on wealth and location, most communities have access
to the technology, if not the means to pay for it. Image 4 shows the
distribution of technologies is prevalent yet unevenly divided in many American
households (Andersn & Kumar, 2021).
Image 4. Distribution of technology in American households
by income
Despite access to technology, the
instruments driving this socio-technology integration are widely available
across the country. This technology's availability increases the likelihood of
adopting an in-home patient monitoring solution. I would argue that Medicare
and Medicaid spending on these solutions is cheaper than in-hospital treatment.
There remain several significant
hurdles that need conquering before adopting this technology integration with
the human experience. Perhaps the most notable is the trust people have with
the technology. Deploying the solution in a person's home involves a level of
privacy invasion and subsequent sharing of information with another community.
There are legitimate reason's to distrust an organization's motives behind data
gathering (Rivero, 2020).
FHIR
protects data in motion from bad actors but does not protect against
exploitation by businesses. The pollical systems need to address the populaces
concerns about data protection and exploitation of personal information (Evans, 2016). The Health Insurance
Portability and Accountability Act defines the standards business must take to
protect patient privacy. Still, this legislation does not address the
responsibilities individuals and organizations must take on that information (Annas, 2003). Any future healthcare
technology integration with the human experience must address the legal
obligations and healthcare provider's protections from litigation (Ramanujan & Kesh, 2020).
The
reduction of healthcare costs needs innovative solutions, and in-home
monitoring and electronic medical record integration offer one avenue to
achieving those savings. The integration of technology into our communities
remains a challenge, with many questions currently without answers.
Areas
of Future Research
There are
many unanswered questions regarding the adoption of privacy-invasive
technologies into the home environment. Community leaders may question the
value in-home monitoring provides and its effectiveness in reducing costs.
Proving the value and savings is challenging. Additional research should
explore the relationship between technology adoption with the use of pilot
studies in at-risk populations. Evaluating the technology benefit to the most
vulnerable people at risk for acute deterioration in health is essential in
determining inpatient admission reductions.
Further
research into efficient machine learning algorithms analysis of high
dimensional data is essential to adopting in-home monitoring. In addition, the
collection of biometric data, such as vital signs and blood glucose monitoring,
results in the formation of large datasets. The analysis of this information is
impractical for a provider to review and requires electronic tools. Two
promising technique involves dimensional data reduction using vector
quantization and multidimensional scaling (Fodor, 2002).
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Thank you for sharing your plan! As time passes, it will be fascinating to see how this field matures and your role in encouraging future growth!
ReplyDeleteYou are ahead of your time and I will look forward to seeing your dreams come to life.
Have a grand future and dream big! *cheers*