docs(thesis): add lit review to introduction
This commit is contained in:
parent
80b481bee7
commit
2131447870
BIN
docs/thesis/figures/prisma-flowchart.png
Normal file
BIN
docs/thesis/figures/prisma-flowchart.png
Normal file
Binary file not shown.
After Width: | Height: | Size: 247 KiB |
@ -27,6 +27,12 @@
|
|||||||
description={User Interface},
|
description={User Interface},
|
||||||
first={User Interface (GUI)}
|
first={User Interface (GUI)}
|
||||||
}
|
}
|
||||||
|
\newglossaryentry{iot}{
|
||||||
|
type=\acronymtype,
|
||||||
|
name={IoT},
|
||||||
|
description={Internet of Things},
|
||||||
|
first={Internet of Things (IoT)}
|
||||||
|
}
|
||||||
\newglossaryentry{spo2}{
|
\newglossaryentry{spo2}{
|
||||||
type=\acronymtype,
|
type=\acronymtype,
|
||||||
name={SPO\textsubscript{2}},
|
name={SPO\textsubscript{2}},
|
||||||
|
@ -123,8 +123,6 @@ A summary must be written in both English and German.
|
|||||||
|
|
||||||
\subsection{Background}
|
\subsection{Background}
|
||||||
|
|
||||||
% TODO add full lit review
|
|
||||||
|
|
||||||
Clinical \gls{deterioration} is a critical concern in healthcare, particularly for vulnerable populations such as the elderly and chronically
|
Clinical \gls{deterioration} is a critical concern in healthcare, particularly for vulnerable populations such as the elderly and chronically
|
||||||
ill patients. It refers to a decline in a patient's health status and may lead to adverse outcomes, including hospitalization,
|
ill patients. It refers to a decline in a patient's health status and may lead to adverse outcomes, including hospitalization,
|
||||||
longer stays in intensive care units, and increased healthcare costs.
|
longer stays in intensive care units, and increased healthcare costs.
|
||||||
@ -183,30 +181,349 @@ With hospitals facing overwhelming patient load during the SARS-CoV-2 pandemic,
|
|||||||
and \Gls{news2} emerged as an effective tool for predicting severe infection outcomes\cite{filho_iot-based_2021, gidari_predictive_2020, otoom_iot-based_2020, carr_evaluation_2021}
|
and \Gls{news2} emerged as an effective tool for predicting severe infection outcomes\cite{filho_iot-based_2021, gidari_predictive_2020, otoom_iot-based_2020, carr_evaluation_2021}
|
||||||
while reducing person-to-person contact during patient monitoring.
|
while reducing person-to-person contact during patient monitoring.
|
||||||
|
|
||||||
\subsection{Motivation}
|
\subsection{Review of existing literature}
|
||||||
|
|
||||||
|
In order to examine the current state of scientific knowledge about the use of wearable devices for automated \Gls{ews} monitoring of
|
||||||
|
patients at home, a comprehensive review of the existing literature was conducted.
|
||||||
|
By systematically examining and synthesizing the current body of knowledge, this review identified a variety of approaches for
|
||||||
|
utilizing smart medical devices in post-discharge patient care, as well as existing limitations and challenges in future research
|
||||||
|
in this rapidly evolving field.
|
||||||
|
|
||||||
|
\subsubsection{Search strategy}
|
||||||
|
|
||||||
|
A systematic search strategy was implemented on the Scopus database, aimed to encompass a broad spectrum of literature relevant
|
||||||
|
to the use of smart medical devices for automated early warning score monitoring of patients dismissed from ambulant or hospital care.
|
||||||
|
The search focused on topics related to the research area, encompassing the examination of \Gls{ews}, hospital admission, care escalation,
|
||||||
|
and medical emergencies in combination with IT automation, medical wearables and \Gls{iot}.
|
||||||
|
The Scopus database was chosen for its extensive coverage of scholarly literature across multiple disciplines.
|
||||||
|
|
||||||
|
For the search strategy, the following inclusion and exclusion criteria were employed to select relevant articles:
|
||||||
|
|
||||||
|
Inclusion criteria:
|
||||||
|
|
||||||
|
\begin{itemize}
|
||||||
|
\item Articles focusing on the utilization of medical wearable devices for remote patient monitoring
|
||||||
|
\item Articles addressing the automated calculation of early warning scores
|
||||||
|
\item Articles discussing the application of early warning scores outside of medical care facilities
|
||||||
|
\end{itemize}
|
||||||
|
|
||||||
|
Exclusion criteria:
|
||||||
|
|
||||||
|
\begin{itemize}
|
||||||
|
\item Non-English language articles
|
||||||
|
\item Publications for which full-text access was not available
|
||||||
|
\item Duplicate articles
|
||||||
|
\item Articles outside of the \enquote{Computer Science} subject area
|
||||||
|
\end{itemize}
|
||||||
|
|
||||||
|
The following Scopus query was used to identify relevant literature:
|
||||||
|
|
||||||
|
\begin{tcolorbox}[enhanced, center, width=0.95\linewidth, rounded corners=all, colframe=black!75!white, boxrule=0.5pt, colback=black!5!white]
|
||||||
|
\begin{lstlisting}[language=SQL]
|
||||||
|
TITLE-ABS-KEY(("patient" OR "clinical" OR "medical") AND ("deterioration" OR "instability" OR "decompensation" OR "admission" OR "hospitalization" OR "escalation" OR "triage" OR "emergency")) OR ("early warning" OR "early warning score" OR "warning" OR "score*" OR "EWS") AND TITLE-ABS-KEY("system" OR "automat*" OR "smart*" OR "wearable*" OR "internet of thing*" OR "iot" OR "digital" OR "sensor*" OR "signal" OR "intelligen*" OR "predict*" OR "monitor*" OR "sreen*" OR "remote" OR "it" OR "comput*" OR "mobile" OR "5G" OR "network" (("vital*" OR "bio*") AND ("marker*" OR "sign*" OR "monitor*"))) AND TITLE-ABS-KEY("home" OR "domestic" OR "community" OR "remote" OR "longterm" OR "nursing" OR "rehabilitation" OR "outof*hospital" OR "telemedicine" OR "ehealth" OR "mhealth")
|
||||||
|
\end{lstlisting}
|
||||||
|
\end{tcolorbox}
|
||||||
|
|
||||||
|
\subsubsection{Results}
|
||||||
|
|
||||||
|
\begin{figure}[h]
|
||||||
|
\begin{center}
|
||||||
|
\includegraphics[width=.5\textwidth]{./figures/prisma-flowchart.png}
|
||||||
|
\caption{\label{prisma-flowchart}PRISMA flowchart showing screening and assessment of identified literature}
|
||||||
|
\end{center}
|
||||||
|
\end{figure}
|
||||||
|
|
||||||
|
An initial query on Scopus yielded a total of $N=1997$ records.
|
||||||
|
After removing duplicates, $N=952$ records were excluded, resulting in $N=1045$ unique records.
|
||||||
|
Upon screening the titles and abstracts, $N=963$ records did not meet the inclusion criteria, leaving $N=82$ articles to be assessed for
|
||||||
|
eligibility in full text.
|
||||||
|
Finally, after a thorough evaluation, $N=45$ articles were included for the literature review, providing insight into the current state of
|
||||||
|
research on the use of smart medical devices for automated early warning score monitoring in patients transitioning from ambulant or
|
||||||
|
hospital care.
|
||||||
|
Figure \ref{prisma-flowchart} shows the literature assessment process.
|
||||||
|
The list of reviewed literature is shown in Tables \ref{tab:inclusion-table-1}, \ref{tab:inclusion-table-2} and \ref{tab:inclusion-table-3}.
|
||||||
|
|
||||||
|
\begin{table}[!ht]
|
||||||
|
\centering
|
||||||
|
\begin{tcolorbox}[
|
||||||
|
enhanced, width=\linewidth, boxrule=2pt, arc=4pt,
|
||||||
|
tabularx={
|
||||||
|
>{\footnotesize}r
|
||||||
|
>{\footnotesize}X
|
||||||
|
>{\footnotesize}l
|
||||||
|
}
|
||||||
|
]
|
||||||
|
\textbf{Number} & \textbf{Title} & \textbf{Author(s), Year} \\
|
||||||
|
\specialrule{2pt}{0em}{0em}
|
||||||
|
1 &
|
||||||
|
Internet of things enabled in-home health monitoring system using early warning score\cite{anzanpour_internet_2015} &
|
||||||
|
Anzanpour 2015 \\
|
||||||
|
\hline
|
||||||
|
2 &
|
||||||
|
Context-Aware Early Warning System for In-Home Healthcare Using Internet-of-Things\cite{anzanpour_context-aware_2016} &
|
||||||
|
Anzanpour 2016 \\
|
||||||
|
\hline
|
||||||
|
3 &
|
||||||
|
An IoT based system for remote patient monitoring\cite{archip_iot_2016} &
|
||||||
|
Archip 2016 \\
|
||||||
|
\hline
|
||||||
|
4 &
|
||||||
|
Wireless sensor network-based smart room system for healthcare monitoring\cite{arnil_wireless_2011} &
|
||||||
|
Arnil 2011 \\
|
||||||
|
\hline
|
||||||
|
5 &
|
||||||
|
Design and Development of IOT Based Multi-Parameter Patient Monitoring System\cite{athira_design_2020} &
|
||||||
|
Athira 2020 \\
|
||||||
|
\hline
|
||||||
|
6 &
|
||||||
|
Medical warning system based on Internet of Things using fog computing\cite{azimi_medical_2016} &
|
||||||
|
Azimi 2016 \\
|
||||||
|
\hline
|
||||||
|
7 &
|
||||||
|
Self-aware early warning score system for IoT-based personalized healthcare\cite{azimi_self-aware_2017} &
|
||||||
|
Azimi 2017 \\
|
||||||
|
\hline
|
||||||
|
8 &
|
||||||
|
Review on IoT based Healthcare systems\cite{b_v_review_2022} &
|
||||||
|
Krishna 2022 \\
|
||||||
|
\hline
|
||||||
|
9 &
|
||||||
|
Effectiveness of Early Warning Scores for Early Severity Assessment in Outpatient Emergency Care: A Systematic Review\cite{burgos-esteban_effectiveness_2022} &
|
||||||
|
Burgos-Esteban 2022 \\
|
||||||
|
\hline
|
||||||
|
10 &
|
||||||
|
A QRS Detection and R Point Recognition Method for Wearable Single-Lead ECG Devices\cite{chen_qrs_2017} &
|
||||||
|
Chen 2017 \\
|
||||||
|
\hline
|
||||||
|
11 &
|
||||||
|
Adopting the Internet of Things technologies in health care systems\cite{chiuchisan_adopting_2014} &
|
||||||
|
Chiuchisan 2014 \\
|
||||||
|
\hline
|
||||||
|
12 &
|
||||||
|
An Efficient Wireless Health Monitoring System\cite{chowdary_efficient_2018} &
|
||||||
|
Chowdary 2018 \\
|
||||||
|
\hline
|
||||||
|
13 &
|
||||||
|
DeepSigns: A predictive model based on Deep Learning for the early detection of patient health deterioration\cite{da_silva_deepsigns_2021} &
|
||||||
|
da Silva 2021 \\
|
||||||
|
\hline
|
||||||
|
14 &
|
||||||
|
Use of ultra-low cost fitness trackers as clinical monitors in low resource emergency departments\cite{dagan_use_2020} &
|
||||||
|
Dagan 2020 \\
|
||||||
|
\hline
|
||||||
|
15 &
|
||||||
|
A data fusion algorithm for clinically relevant anomaly detection in remote health monitoring\cite{de_mello_dantas_data_2020} &
|
||||||
|
de Mello Dantas 2020 \\
|
||||||
|
\hline
|
||||||
|
16 &
|
||||||
|
Patient attitudes towards remote continuous vital signs monitoring on general surgery wards: An interview study\cite{downey_strengths_2017} &
|
||||||
|
Downey 2018 \\
|
||||||
|
\hline
|
||||||
|
17 &
|
||||||
|
Developing a real-time detection tool and an early warning score using a continuous wearable multi-parameter monitor\cite{eisenkraft_developing_2023} &
|
||||||
|
Eisenkraft 2023 \\
|
||||||
|
\hline
|
||||||
|
18 &
|
||||||
|
An IoT-Based Healthcare Platform for Patients in ICU Beds During the COVID-19 Outbreak\cite{filho_iot-based_2021} &
|
||||||
|
Filho 2021 \\
|
||||||
|
\end{tcolorbox}
|
||||||
|
\caption{\label{tab:inclusion-table-1}List of reviewed articles \textit{(Part 1 of 3)}}
|
||||||
|
\end{table}
|
||||||
|
|
||||||
|
\begin{table}[!ht]
|
||||||
|
\centering
|
||||||
|
\begin{tcolorbox}[
|
||||||
|
enhanced, width=\linewidth, boxrule=2pt, arc=4pt,
|
||||||
|
tabularx={
|
||||||
|
>{\footnotesize}r
|
||||||
|
>{\footnotesize}X
|
||||||
|
>{\footnotesize}l
|
||||||
|
}
|
||||||
|
]
|
||||||
|
\textbf{Number} & \textbf{Title} & \textbf{Author(s), Year} \\
|
||||||
|
\specialrule{2pt}{0em}{0em}
|
||||||
|
19 &
|
||||||
|
Patient Monitoring System Based on Internet of Things\cite{gomez_patient_2016} &
|
||||||
|
Gomez 2016 \\
|
||||||
|
\hline
|
||||||
|
20 &
|
||||||
|
Continuous monitoring is superior to manual measurements in detecting vital sign deviations in patients with COVID-19\cite{gronbaek_continuous_2023} &
|
||||||
|
Gronbaek 2023 \\
|
||||||
|
\hline
|
||||||
|
21 &
|
||||||
|
Secure and lightweight privacy preserving Internet of things integration for remote patient monitoring\cite{imtyaz_ahmed_secure_2022} &
|
||||||
|
Imtyaz 2022 \\
|
||||||
|
\hline
|
||||||
|
22 &
|
||||||
|
Remote Continuous Health Monitoring System for Patients\cite{jagadish_remote_2018} &
|
||||||
|
Jagadish 2018 \\
|
||||||
|
\hline
|
||||||
|
23 &
|
||||||
|
Cost utility analysis of continuous and intermittent versus intermittent vital signs monitoring in patients admitted to surgical wards\cite{javanbakht_cost_2020} &
|
||||||
|
Javanbakht 2020 \\
|
||||||
|
\hline
|
||||||
|
24 &
|
||||||
|
Wearable sensors to improve detection of patient deterioration\cite{joshi_wearable_2019} &
|
||||||
|
Joshi 2019 \\
|
||||||
|
\hline
|
||||||
|
25 &
|
||||||
|
Intelligent Healthcare\cite{kale_intelligent_2021} &
|
||||||
|
Kale 2021 \\
|
||||||
|
\hline
|
||||||
|
26 &
|
||||||
|
A Hospital Healthcare Monitoring System Using Internet of Things Technologies\cite{karvounis_hospital_2021} &
|
||||||
|
Karvounis 2021 \\
|
||||||
|
\hline
|
||||||
|
27 &
|
||||||
|
All-day mobile healthcare monitoring system based on heterogeneous stretchable sensors for medical emergency\cite{lee_all-day_2020} &
|
||||||
|
Lee 2020 \\
|
||||||
|
\hline
|
||||||
|
28 &
|
||||||
|
Analysis of the early warning score to detect critical or high-risk patients in the prehospital setting\cite{martin-rodriguez_analysis_2019} &
|
||||||
|
Martin-Rodriguez 2019 \\
|
||||||
|
\hline
|
||||||
|
29 &
|
||||||
|
An IoT-based framework for early identification and monitoring of COVID-19 cases\cite{otoom_iot-based_2020} &
|
||||||
|
Otoom 2020 \\
|
||||||
|
\hline
|
||||||
|
30 &
|
||||||
|
A conceptual IoT-based early-warning architecture for remote monitoring of COVID-19 patients in wards and at home\cite{paganelli_conceptual_2022} &
|
||||||
|
Paganelli 2022 \\
|
||||||
|
\hline
|
||||||
|
31 &
|
||||||
|
Personalized Mobile Health for Elderly Home Care: A Systematic Review of Benefits and Challenges\cite{pahlevanynejad_personalized_2023} &
|
||||||
|
Pahlevanynejad 2023 \\
|
||||||
|
\hline
|
||||||
|
32 &
|
||||||
|
CuraBand: Health Monitoring and Warning System\cite{phaltankar_curaband_2021} &
|
||||||
|
Phaltankar 2021 \\
|
||||||
|
\hline
|
||||||
|
33 &
|
||||||
|
Internet of Things in Healthcare, A Literature Review\cite{quraishi_internet_2021} &
|
||||||
|
Quraishi 2021 \\
|
||||||
|
\hline
|
||||||
|
34 &
|
||||||
|
Vital Sign Monitoring System for Healthcare Through IoT Based Personal Service Application\cite{sahu_vital_2022} &
|
||||||
|
Sahu 2022 \\
|
||||||
|
\hline
|
||||||
|
35 &
|
||||||
|
Internet-of-Things-Enabled Early Warning Score System for Patient Monitoring\cite{sahu_internet--things-enabled_2022} &
|
||||||
|
Sahu 2022 \\
|
||||||
|
\hline
|
||||||
|
36 &
|
||||||
|
Cloud-Based Remote Patient Monitoring System with Abnormality Detection and Alert Notification\cite{sahu_cloud-based_2022} &
|
||||||
|
Sahu 2022 \\
|
||||||
|
\end{tcolorbox}
|
||||||
|
\caption{\label{tab:inclusion-table-2}List of reviewed articles \textit{(Part 2 of 3)}}
|
||||||
|
\end{table}
|
||||||
|
|
||||||
|
\begin{table}[!ht]
|
||||||
|
\centering
|
||||||
|
\begin{tcolorbox}[
|
||||||
|
enhanced, width=\linewidth, boxrule=2pt, arc=4pt,
|
||||||
|
tabularx={
|
||||||
|
>{\footnotesize}r
|
||||||
|
>{\footnotesize}X
|
||||||
|
>{\footnotesize}l
|
||||||
|
}
|
||||||
|
]
|
||||||
|
\textbf{Number} & \textbf{Title} & \textbf{Author(s), Year} \\
|
||||||
|
\specialrule{2pt}{0em}{0em}
|
||||||
|
37 &
|
||||||
|
Remote patient monitoring using artificial intelligence: Current state, applications, and challenges\cite{shaik_remote_2023} &
|
||||||
|
Shaik 2023 \\
|
||||||
|
\hline
|
||||||
|
38 &
|
||||||
|
Prototype development of continuous remote monitoring of ICU patients at home\cite{thippeswamy_prototype_2021} &
|
||||||
|
Thippeswamy 2021 \\
|
||||||
|
\hline
|
||||||
|
39 &
|
||||||
|
IoT based Smart Healthcare Monitoring Systems: A Review\cite{tiwari_iot_2021} &
|
||||||
|
Tiwari 2021 \\
|
||||||
|
\hline
|
||||||
|
40 &
|
||||||
|
Observational study on wearable biosensors and machine learning-based remote monitoring of COVID-19 patients\cite{un_observational_2021} &
|
||||||
|
Un 2021 \\
|
||||||
|
\hline
|
||||||
|
41 &
|
||||||
|
Adaptive threshold-based alarm strategies for continuous vital signs monitoring\cite{van_rossum_adaptive_2022} &
|
||||||
|
van Rossum 2022 \\
|
||||||
|
\hline
|
||||||
|
42 &
|
||||||
|
A retrospective comparison of the Modified Early Warning Score (MEWS) and machine learning approach\cite{wu_predicting_2021} &
|
||||||
|
Wu 2021 \\
|
||||||
|
\hline
|
||||||
|
43 &
|
||||||
|
IoT based Real Time Health Monitoring\cite{yeri_iot_2020} &
|
||||||
|
Yeri 2020 \\
|
||||||
|
\hline
|
||||||
|
44 &
|
||||||
|
Vital Signs Prediction and Early Warning Score Calculation Based on Continuous Monitoring of Hospitalised Patients Using Wearable Technology\cite{youssef_ali_amer_vital_2020} &
|
||||||
|
Youssef Ali Amer 2020 \\
|
||||||
|
\hline
|
||||||
|
45 &
|
||||||
|
Features of electronic Early Warning systems which impact clinical decision making\cite{zarabzadeh_features_2012} &
|
||||||
|
Zarabzadeh 2012 \\
|
||||||
|
\end{tcolorbox}
|
||||||
|
\caption{\label{tab:inclusion-table-3}List of reviewed articles \textit{(Part 3 of 3)}}
|
||||||
|
\end{table}
|
||||||
|
|
||||||
|
% TODO for all outcomes, present and compare the findings of each study
|
||||||
|
|
||||||
|
\subsubsection{Discussion}
|
||||||
|
|
||||||
While the application of \Glspl{ews} in ambulant care facilities and hospitals has been thoroughly investigated,
|
While the application of \Glspl{ews} in ambulant care facilities and hospitals has been thoroughly investigated,
|
||||||
very little research has been done to assess their practicability for remote monitoring of at-risk patients at home.
|
very little research has been done to assess their practicability for remote monitoring of at-risk patients at home.
|
||||||
|
Furthermore, it was observed that previous research on the use of \Gls{iot}-devices for this purpose was largely conducted in
|
||||||
|
experimental settings, limiting the generalizability of the results.
|
||||||
Some studies have examined monitoring vital signs of at-home-patients for abnormalities,
|
Some studies have examined monitoring vital signs of at-home-patients for abnormalities,
|
||||||
however in most of them, no automated \Gls{ews} calculations were made\cite{archip_iot_2016, azimi_medical_2016, chowdary_efficient_2018, yeri_iot_2020, lee_all-day_2020, athira_design_2020, phaltankar_curaband_2021, thippeswamy_prototype_2021}.
|
however in most of them, no automated EWS calculations were made\cite{archip_iot_2016, azimi_medical_2016, chowdary_efficient_2018, yeri_iot_2020, lee_all-day_2020, athira_design_2020, phaltankar_curaband_2021, thippeswamy_prototype_2021}.
|
||||||
In 2015, Anzanpour et al. developed a monitoring system which collects vitals data and calculates an \Gls{ews}, however due to limited or nonexistent
|
In 2015, Anzanpour et al. developed a monitoring system which collects vitals data and calculates an \Gls{ews}, however due to limited or nonexistent
|
||||||
availability of wireless sensors for all relevant vital signs, the work was limited to using a laboratory prototype
|
availability of wireless sensors for all relevant vital signs, the work was limited to using a laboratory prototype
|
||||||
and required manual interaction in transferring vitals data\cite{anzanpour_internet_2015}.
|
and required manual interaction in transferring vitals data\cite{anzanpour_internet_2015}.
|
||||||
Sahu et al. documented their development of an \Gls{ews}-supported digital early warning system using the PM6750\cite{sahu_internet--things-enabled_2022},
|
Sahu et al. documented their development of an \Gls{ews}-supported digital early warning system using the PM6750\cite{sahu_internet--things-enabled_2022},
|
||||||
an experimental vitals data monitoring device capable of taking continuous measurements in a laboratory setting\cite{noauthor_pm6750_nodate}.
|
an experimental vitals data monitoring device capable of taking continuous measurements in a laboratory setting\cite{noauthor_pm6750_nodate}.
|
||||||
However, the methodology they used to calculate an \Gls{ews} in real-time with laboratory data is both inconsistent and weak.
|
However, the methodology they used to calculate the \Gls{ews} in real-time with laboratory data is both inconsistent and weak.
|
||||||
|
|
||||||
The availability of comprehensive, mobile vital signs monitoring equipment has seen a significant increase, especially in the wake of the SARS-CoV-2
|
Recent studies indicate a growing trend towards investigating automated \Gls{ews} calculations in real-world scenarios\cite{downey_strengths_2017, karvounis_hospital_2021, b_v_review_2022, dagan_use_2020}.
|
||||||
|
Notably, the availability of comprehensive, mobile vital signs monitoring equipment has seen a significant increase, especially in the wake of the SARS-CoV-2
|
||||||
pandemic\cite{paganelli_conceptual_2022, filho_iot-based_2021, otoom_iot-based_2020, gronbaek_continuous_2023}.
|
pandemic\cite{paganelli_conceptual_2022, filho_iot-based_2021, otoom_iot-based_2020, gronbaek_continuous_2023}.
|
||||||
Since then, a variety of wearable medical sensors capable of continuously recording vital parameters have been developed and are
|
|
||||||
commercially available\cite{noauthor_visi_nodate, noauthor_equivital_nodate, noauthor_vitls_nodate, noauthor_caretaker_nodate, noauthor_medtronic_nodate, noauthor_bpm_nodate, noauthor_worlds_nodate, noauthor_smart_nodate}.
|
|
||||||
This surge in accessibility has paved the way for more extensive and continuous monitoring of patients in non-medical care settings.
|
This surge in accessibility has paved the way for more extensive and continuous monitoring of patients in non-medical care settings.
|
||||||
This demonstrates the evolving landscape of \Gls{rpm}, aiming to improve clinical outcomes and alleviate the burden on hospital wards.
|
Moreover, there is a growing interest in incorporating machine learning algorithms to enhance the predictive capabilities of
|
||||||
|
deterioration detection\cite{un_observational_2021, da_silva_deepsigns_2021, de_mello_dantas_data_2020}.
|
||||||
|
This demonstrates the evolving landscape of remote patient monitoring, aiming to improve clinical outcomes and alleviate the
|
||||||
|
burden on hospital wards.
|
||||||
|
|
||||||
|
Despite the wealth of literature reviewed, no existing empirical studies evaluating the use of early warning scores for
|
||||||
|
patients at home were identified.
|
||||||
|
This highlights a crucial research gap and prompts the need for further investigation in this area, potentially warranting the development
|
||||||
|
of an \Gls{ews} specialized for use outside of medical care facilities.
|
||||||
|
|
||||||
|
\subsubsection{Interpretation of Results}
|
||||||
|
|
||||||
|
Based on the findings, several key implications can be drawn.
|
||||||
|
Firstly, the improved availability of smart sensors and the demonstrated effectiveness of \Glspl{ews} in predicting deterioration in direct
|
||||||
|
medical care settings warrant research into their utilization at home.
|
||||||
By remotely monitoring patients, it may be possible to identify early signs of deterioration, enabling earlier dismissal from
|
By remotely monitoring patients, it may be possible to identify early signs of deterioration, enabling earlier dismissal from
|
||||||
hospital care and thereby freeing up valuable resources.
|
hospital care and thereby freeing up valuable resources.
|
||||||
Additionally, this approach holds the potential to reduce mortality rates and minimize the frequency of adverse clinical outcomes.
|
Additionally, this approach holds the potential to reduce mortality rates and minimize the frequency of adverse clinical outcomes.
|
||||||
|
|
||||||
|
However, it is important to acknowledge the lack of research on the use of \Glspl{ews} at home, which calls for a feasibility study in this
|
||||||
|
specific context.
|
||||||
|
This study would need to address challenges such as the frequency of measurements required and the absence of immediate diagnosis
|
||||||
|
from qualified medical staff.
|
||||||
|
Overcoming these obstacles is essential to ensure the safety and efficacy of automated remote patient monitoring in home-based settings.
|
||||||
|
|
||||||
|
In conclusion, the literature review highlights the increasing interest in using smart medical devices and EWS for remote patient
|
||||||
|
monitoring, particularly in real-world scenarios.
|
||||||
|
The absence of studies evaluating the application of \Glspl{ews} for patients at home underscores the need for further investigation in this area.
|
||||||
|
Conducting a feasibility study to explore the practicality and challenges of implementing \Glspl{ews} in home-based care would contribute
|
||||||
|
significantly to the existing body of knowledge and help advance the field of automated early warning score monitoring in
|
||||||
|
non-medical care settings.
|
||||||
|
|
||||||
|
\subsection{Motivation}
|
||||||
|
|
||||||
|
% TODO EWS makes prediction value better than monitoring abnormalities in single vital signs
|
||||||
Installing and operating traditional continuous monitoring systems, like the vital sign monitors used in medical facilities, demands
|
Installing and operating traditional continuous monitoring systems, like the vital sign monitors used in medical facilities, demands
|
||||||
specialized equipment and technical expertise.
|
specialized equipment and technical expertise.
|
||||||
Furthermore, these systems are cumbersome for patients, as they involve connecting patient and sensor device with numerous electrodes
|
Furthermore, these systems are cumbersome for patients, as they involve connecting patient and sensor device with numerous electrodes
|
||||||
@ -215,16 +532,16 @@ to a single location.
|
|||||||
Conversely, battery-powered, wireless vitals monitoring devices, such as wearable armbands or smartwatches, can combine several
|
Conversely, battery-powered, wireless vitals monitoring devices, such as wearable armbands or smartwatches, can combine several
|
||||||
biometric sensors into one device, allowing for a much higher degree of patient mobility, faster deployment and better
|
biometric sensors into one device, allowing for a much higher degree of patient mobility, faster deployment and better
|
||||||
scalability\cite{un_observational_2021}.
|
scalability\cite{un_observational_2021}.
|
||||||
|
Therefore, utilizing such devices for \Gls{rpm} is a suitable approach.
|
||||||
|
|
||||||
In summary, with the current availability of wearable, networked biosensors and the validated effectiveness of \Glspl{ews} in medical facilities,
|
In summary, with the current availability of wearable, networked biosensors and the validated effectiveness of EWS in medical facilities,
|
||||||
combining both aspects presents an important and interesting research opportunity which could help reduce mortality and improve clinical
|
combining both aspects presents an important and interesting research opportunity which could help reduce mortality and improve clinical
|
||||||
outcomes for patients at risk of deterioration, both in their homes and on the go.
|
outcomes for patients at risk of deterioration, both in their homes and on the go.
|
||||||
Conducting a feasibility study to explore the practicality and challenges of implementing a system capable of remote \Gls{ews} calculation for mobile patients
|
|
||||||
would contribute significantly to the existing body of knowledge and help advance the field of automated early warning score monitoring in
|
|
||||||
non-medical care settings.
|
|
||||||
|
|
||||||
\subsection{State of the problem}
|
\subsection{State of the problem}
|
||||||
|
|
||||||
|
% Merge with Motivation?
|
||||||
|
|
||||||
% There is a lack of software calculating MEWS with RPM
|
% There is a lack of software calculating MEWS with RPM
|
||||||
|
|
||||||
The rapid advancements in wearable, networked biosensors have expanded the horizons of \Gls{rpm}.
|
The rapid advancements in wearable, networked biosensors have expanded the horizons of \Gls{rpm}.
|
||||||
|
Loading…
x
Reference in New Issue
Block a user