Predictive Analysis: Forecasting Patient's Outcomes and Medical Trends
Page: 1-23 (23)
Author:
DOI: 10.2174/9789815305128124010004
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Abstract
Predictive analysis is rapidly transforming the healthcare industry by
leveraging advanced data analytics techniques to predict patient outcomes and identify
medical record trends. With the increasing availability of electronic health records
(EHRs), wearable devices, and other healthcare data sources, healthcare organizations
can use the results of predictive analytics to improve patient care, optimize resource
allocation, and enhance overall healthcare delivery.
Predictive analysis is a data-driven approach that utilizes historical data and statistical
algorithms to make informed predictions about future events. In the context of
healthcare, predictive analysis involves extracting valuable patterns from huge amounts
of patient data to anticipate patient outcomes, disease progression, and medical trends.
Predictive analytics can identify individuals at high risk of having specific diseases
based on their past medical records and history, genetics, lifestyle, and environmental
factors. Early detection allows for proactive interventions, such as lifestyle changes,
screenings, or preventive treatments, which can significantly reduce healthcare costs
and improve patient outcomes. Healthcare providers can use this information to tailor
treatment plans, allocate resources efficiently, and prioritize patient care. Predictive
analytics can assess patient adherence to medication regimens by analyzing historical
data and patient behavior.
The chapter explores the significance of predictive analysis in healthcare and its
applications in Healthcare Policy and Planning. Policymakers can use predictive
analysis to anticipate healthcare needs, allocate budgets, and plan for future healthcare
infrastructure requirements. Predictive analysis is revolutionizing healthcare by
enabling the forecasting of patient outcomes and medical trends. By harnessing the
power of data and advanced analytics, healthcare providers, researchers, and
policymakers can make more informed decisions, improve patient care, and contribute
to the overall well-being of populations. As technology continues to advance and more
data becomes available, the usage of predictive analysis in healthcare is expected to
expand, offering even greater opportunities to enhance the quality and efficiency of
healthcare delivery.
Prediction and Analysis of Digital Health Records, Geonomics, and Radiology Using Machine Learning
Page: 24-43 (20)
Author:
DOI: 10.2174/9789815305128124010005
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Abstract
Building different machine learning algorithms and their potential
applications to enhance healthcare systems is very important. AI has countless uses in
healthcare, including the analysis of medical data, early disease diagnosis and
detection, evidence-based objectives to minimize human error, reducing errors between
and among observers, risk identification and interventions for healthcare management,
health monitoring in real-time, helping patients and clinicians choose the right
medication, and assessing drug responses. Machine learning techniques have
transformed many facets of healthcare, ranging from new tools that allow people to
better control their health to new models that assist physicians in making more accurate
decisions. Since the advent of the pacemaker and the first computerized records for
blood test results and chest X-ray reports by Kaiser in the 1950s, physicians have seen
the potential of algorithms to save lives. As new developments in image processing,
deep learning, and natural language processing are revolutionizing the healthcare
sector, this rich history of machine learning for healthcare feeds innovative research
today.
It is necessary to comprehend the human effects of machine learning, including
transparency, justice, regulation, simplicity of deployment, and integration into clinical
processes, in order to use it to enhance patient outcomes. The application of machine
learning for risk assessment and diagnosis, illness progression modeling, enhancing
clinical workflows, and precision medicine will be covered in this chapter, which starts
with an introduction to clinical care and data. We shall include all methodological
details for each of these covering topics like algorithmic fairness, causal inference, offpolicy reinforcement learning, interpretability of ML models, and the foundations of
deep learning on imaging and natural language.
Advances in AI and ML technologies have significantly improved the ability to
forecast and recognize health emergencies, disease conditions, disease populations, and
immunological responses, to name a few. Even though there is still doubt about the
usefulness of ML-based techniques and how to interpret their findings in clinical
contexts, their use is spreading quickly. Here, we provide a succinct introduction to
machine learning-based methodologies and learning algorithms, such as reinforcement
learning, supervised learning, and unsupervised learning, with examples. Subsequently,
we explore the applications of machine learning (ML) in various healthcare domains
such as genetics, neuroimaging, radiology, and electronic health records. Along with
offering ideas for potential future uses, we also skim the surface regarding the dangers
and difficulties associated with applying machine learning to the healthcare industry,
including issues of privacy and ethics.
Medical Imaging Using Machine Learning and Deep Learning: A Survey
Page: 44-59 (16)
Author:
DOI: 10.2174/9789815305128124010006
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Abstract
Machine learning and deep learning which are the subsets of Artificial
intelligence, have numerous uses in medical imaging. Advancements in machine
learning and deep learning led to drastic improvements in medical imaging fields like
the evaluation of risks, recognition, identification, prediction, and treatment results.
The decision-making power of computers based on artificial intelligence has elevated
the effectiveness and efficiency of human decisions. Techniques based on machine
learning and deep learning are not only effective and efficient but also speedy. In the
medical field, the stage of the diagnosed disease is of great importance as the treatment
and recovery rates depend on it. So based on the best and fastest decisions given by
machine learning and deep learning techniques, medical practitioners can give their
services in a better way.
We have given a summary of the methods used in medical imaging based on machine
learning and deep learning algorithms with the benefits and pitfalls of these algorithms.
These algorithms offer remarkable methods for classification, segmentation, and
autonomous decision-making ability for the analysis of medical images.
Applications of Machine Learning Practices in Human Healthcare Management Systems
Page: 60-77 (18)
Author:
DOI: 10.2174/9789815305128124010007
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Abstract
In the modern era, medical institutions offer patients high-quality,
reasonably priced treatment, but they require sophisticated technology. But even with
significant advancements in the computerization and digitalization of medicine,
effective and reliable management solutions are still lacking. Medical operations are
very complex, so high-level management is required. Machine learning techniques
might be very useful in resolving these issues since they are scalable and adaptable to
complex patterns. This study suggests that machine learning could improve human
comprehension and oversight of healthcare operations, leading to more efficient
healthcare delivery. The goal of the current study is to examine how machine learning
methods can be used to detect diseases, various clinical trials, drug development,
robotics-based surgery, organ image processing, and various challenges of machine
learning in the medical industry. Finally, along with challenges, the study concludes
that machine learning practices become essential for healthcare organizations of the
modern era.
Multimodal Deep Learning in Medical Diagnostics: A Comprehensive Exploration of Cardiovascular Risk Prediction
Page: 78-94 (17)
Author:
DOI: 10.2174/9789815305128124010008
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Abstract
Machine learning algorithms have been important in identifying and
predicting cardiovascular risk. These algorithms use a variety of data sources, including
patient histories, clinical measures, and electronic health records, to discover people
who could get cardiovascular problems. Methods of deep learning, a subset of machine
learning hold the promise of enhancing the accuracy and effectiveness of
cardiovascular risk prediction models. In this research, retinal images, clinical data, and
various clinical features are employed to harness the capabilities of multimodal deep
learning for predicting cardiovascular risk. The integration of these modalities enables
a holistic assessment of an individual's cardiovascular health, contributing to the
advancement of precision medicine in the realm of Cardiovascular Disease (CVD). The
impact of this research extends beyond cardiovascular risk prediction, as it exemplifies
the transformative potential of machine learning in healthcare. By empowering medical
challenges with cutting-edge technology, our work addresses the urgent need for early
risk assessment, patient stratification, and personalized interventions. This showcases
how the synergy of different data types and deep learning can lead to improved clinical
decision support, reduced healthcare costs, and, ultimately, enhanced patient outcomes.
The potential to deploy such multimodal deep learning models in clinical practice has
the potential to revolutionize the field of cardiovascular health and set a precedent for
the broader role of machine learning in healthcare.
Hypertension Detection System Using Machine Learning
Page: 95-117 (23)
Author:
DOI: 10.2174/9789815305128124010009
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Abstract
The medical condition known as hypertension, or high blood pressure, is
characterized by persistently elevated blood pressure against the arterial walls.
Generally speaking, an individual should maintain blood pressure from 120/80 mm Hg.
Whenever blood pressure continuously registers at 130/80 mm Hg or above,
hypertension is frequently diagnosed. The exact origins are unknown, but factors that
accelerate its growth include obesity, high-stress levels, aging, increased sodium
intake, and decreased physical activity. Numerous organs and systems inside the body
can be significantly impacted by hypertension or high blood pressure. It can cause
several major health issues and diseases, including renal disease and stroke if left
unchecked and untreated. When it comes to the identification and treatment of
hypertension, or high blood pressure, machine learning can be an invaluable tool. It can
help medical practitioners with several procedures, such as risk evaluation, early
detection, and individualized care. Decision-support tools that provide treatment
suggestions based on the most recent medical research and patient-specific data are one
way that machine learning can help healthcare providers. This can assist physicians in
making better-informed choices regarding medication and lifestyle modifications.
Patients with hypertension can benefit from individualized therapy regimens designed
with the help of machine learning. A variety of machine learning algorithms are
available for the prediction of hypertension and related risk variables, including
decision trees (DT), Random Forests (RF), gradient boosting machines (GBM),
extreme gradient boosting (XG Boost), logistic regression (LR), and linear discriminant
analysis (LDA). The quality of the available dataset and the suitable technique are
critical to the effectiveness of machine learning in the detection and management of
hypertension.
Data Collection and Preparation for Medical Applications for Machine Learning
Page: 118-135 (18)
Author:
DOI: 10.2174/9789815305128124010010
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Abstract
The latest developments in Artificial Intelligence (AI) and Machine
Learning (ML) technology have led to significant progress in foreseeing and detecting
health crises, understanding disease prevalence, and analyzing disease states and
immune responses, to name a few applications. The growing abundance of electronic
health data represents a significant prospect within the healthcare field, offering the
potential for advancements in both research and practical healthcare enhancements.
Nevertheless, to effectively harness these data resources, healthcare epidemiologists
need computational methods capable of handling vast and intricate datasets. Over the
last ten years, the utilization of machine learning (ML) in the healthcare sector has
played a pivotal role in automating tasks for physicians, improving clinical capabilities,
and enhancing the availability of healthcare services. Machine learning (ML), which
focuses on developing tools and techniques for recognizing patterns in data, can be an
asset in this regard. This advancement underscores the critical importance of data at
every stage of ML, from model creation to its implementation. In this chapter, we offer
a perspective that centers around data, examining the innovations and obstacles that are
shaping the landscape of ML in healthcare.
Growing Importance of Machine Learning in Healthcare to Determine Potential Risk
Page: 136-158 (23)
Author:
DOI: 10.2174/9789815305128124010011
PDF Price: $15
Abstract
The growing convenience of electronic healthcare data represents a
significant opportunity within the healthcare segment, offering the potential for both
pioneering discoveries as well as practical applications aimed at improving the overall
quality of healthcare. Nevertheless, for healthcare epidemiologists to fully harness the
potential of all these data, there is a pursuing need for computational techniques
capable of handling extensive and intricate datasets. Machine learning (ML), which
involves the investigation of tools and methodologies for discovering hidden patterns
within data, develops as a valuable resource in this context. The cautious
implementation of Machine Learning techniques with electronic healthcare data
embraces the potential of a comprehensive transformation of patient risk assessment,
traversing across the entire spectrum of medical disciplines and predominantly
impacting the domain of infectious diseases. Such a transformation could ultimately
lead to the development of precise interventions designed to mitigate the proliferation
of healthcare-associated pathogens. Healthcare epidemiologists are facing an
increasingly demanding task of processing and deciphering extensive and intricate
datasets. This challenge arises in the cycle with the expanding role of healthcare
epidemiologists, paralleled by the growing prevalence of electronic health data. The
availability of substantial volumes of high-quality data at both the patient and facility
levels has opened new avenues for exploration. Specifically, these data hold the
potential to enhance our comprehension of the risk factors associated with healthcareassociated infections (HAIs), refine patient risk assessment methodologies, and unveil
the pathways responsible for the intra- and interfacility transmission of infectious
diseases. These insights, in turn, pave the way for targeted preventive measures.
Historically, a significant portion of clinical data remained unutilized, often due to the
sheer magnitude and intricacy of the data itself, as well as the absence of suitable
techniques for data collection and storage. These valuable data resources were
frequently underappreciated and underutilized. However, the advent of novel and
improved data collection and storage methods, such as electronic health records, has
presented a unique opportunity to address this issue. Especially, machine learning has
begun to permeate the realm of clinical literature at large. The prudent application of Machine Learning within the domain of healthcare epidemiology (HE) holds the
promise of yielding substantial returns on the considerable investments made in data
collection within the field. In the context of this research work, the initiative has been
given by elucidating the fundamental principles of Machine Learning, subsequently
investigating its relevance and applications within the realm of healthcare
epidemiology, reinforced by illustrative instances of successful research endeavours.
Finally, we outline some of the reasonable considerations essential for the design and
execution of ML methodologies within the field of healthcare epidemiology. Within
the scope of this research, an effort has been initiated by providing an introductory
overview of the fundamental principles of Machine Learning.
Subsequently, it is explored into an exploration of how Machine Learning stands
poised to revolutionize healthcare epidemiology, substantiating our discussion with
illustrative instances of successful applications.
Challenges and Opportunities for the Healthcare
Page: 159-190 (32)
Author:
DOI: 10.2174/9789815305128124010012
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Abstract
Machine learning technology is a rapidly growing field aiming to create
systems replicating human intelligence. In the healthcare sector, machine learning is
not meant to replace human physicians but to provide better solutions to healthcare
problems. It plays a critical role in the development of automated computational
approaches. It has numerous applications in radiology, computer-aided drug design,
virtual health assistance, clinical decisions, disease outbreaks, healthcare management,
and administration. Security and privacy risks are a significant concern with AIpowered healthcare systems since the healthcare sector has distinct security and privacy
requirements to safeguard patients' medical information. Despite this, using machine
learning in healthcare has many benefits, including faster analysis of large datasets,
improved safety of clinical trials, better insights into predictive screening, higher
accuracy, reduced healthcare costs, and increased efficiency. Although many AI and
machine learning applications have been successfully deployed in medical research and
continue to deliver favorable results, challenges still need to be addressed. In this book
chapter, we delve into the latest challenges and opportunities that the healthcare
industry faces. We explore the changing landscape of healthcare and provide insights
into how technological advancements, regulatory changes, and shifting patient
expectations are shaping the future of healthcare delivery. Whether you're a healthcare
professional, policymaker, or just interested in the industry, this chapter will provide
valuable insights and a fresh perspective on the challenges and opportunities faced by
the healthcare industry today.
Fundamentals of Machine Learning in Healthcare
Page: 191-218 (28)
Author:
DOI: 10.2174/9789815305128124010013
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Abstract
Machine learning (ML), a subset of artificial intelligence (AI), is
revolutionizing industries by leveraging statistical algorithms that learn from data and
experiences. Unlike traditional programs following predetermined sequences, ML
algorithms discern patterns and predict outcomes through extensive datasets. This
transformative technology has profoundly impacted diverse sectors, including
manufacturing, finance, retail, transportation, entertainment, and healthcare. The
influence of ML is amplified by the accessibility of extensive datasets and the
escalating computational prowess of modern systems. As ML algorithms progress, they
are fundamentally reshaping business operations, streamlining processes, enhancing
decision-making, and fuelling innovation across sectors. The impact of machine
learning algorithms on healthcare applications and the usage of diverse data sources,
such as electronic health records, medical imaging, wearable devices, and genomic
data, is discussed in this chapter.
Healthcare Machine Learning Insights
Page: 219-231 (13)
Author:
DOI: 10.2174/9789815305128124010014
PDF Price: $15
Abstract
Machine learning can potentially improve the medical industry by providing
different healthcare opportunities. Medical records that previously required human
intervention can now be processed using a machine-learning algorithm in seconds. It
can learn like humans and adjust to new inputs in a very efficient way. The quality of
treatment has also improved. The correct diagnosis of disease and analysis of additional
data on a patient’s condition using machine learning is helping doctors to make the
process simple and efficient. Doctors can simplify and expedite the process with the aid
of machine learning, which facilitates accurate disease diagnosis and extra data
analysis regarding a patient's condition. Machine learning algorithms also help in
discovering unexpected patterns in clinical trials. But things are not as simple as they
seem to be. Opportunities are always paired with challenges. The results we get from
machine learning algorithms depend on the quality of data we feed into it and there is
no guarantee of the fact that medical data is always precise and accurate. There may be
gaps in records and it may be inaccurate. Lack of quality data to build precise
algorithms can be a major challenge. In this chapter, we will be presenting the
opportunities provided by machine learning in healthcare and also the challenges that
are making things difficult.
Revolutionizing Healthcare: The Power of Machine Learning
Page: 232-247 (16)
Author:
DOI: 10.2174/9789815305128124010015
PDF Price: $15
Abstract
Machine learning is a challenging platform employed across various
fundamental domains to investigate diverse patterns within extensive datasets.
Gradually, the outcomes of machine learning influence crucial decisions in pertinent
fundamental areas concerning healthcare and biomedicine. Frequent changes in the
domain of technology like deep learning, artificial networks, machine learning, and big
data have been dealt with the best opportunities to give more applications in healthcare.
Efficient healthcare communication is crucial for accurately conveying and
disseminating information to aid and educate patients and the general public. Machine
learning has demonstrated its applicability in healthcare, particularly in facilitating
intricate dialogue management and conversational adaptability. In speedy progress in
the medical environment, some domains like machine learning, deep learning, big data,
and AI-based systems fundamentals are to be managed and held accountable in
healthcare. Machine learning is a subset of Artificial Intelligence that contains some
computer systems which can perform the huge task of developing different
fundamentals on the basis of human needs in healthcare. Machine learning (ML)
technology has had a profound impact on healthcare, offering innovative solutions to
various challenges in the industry. Machine learning algorithms analyze medical
images, clinical data, and genetic information to assist in the early detection and
accurate diagnosis of diseases, such as cancer, diabetes, and cardiovascular conditions.
Machine learning accelerates the drug discovery process by analyzing large datasets to
identify potential drug candidates and predict their efficacy and safety profiles.
Machine learning models predict patient admission rates, optimize resource allocation,
and improve hospital operations, leading to better efficiency and cost-effectiveness.
Nowadays, Machine learning is centered on creating algorithms that can adjust to new
data and uncover patterns. It is a prime exemplar of data mining principles, capable of
inferring correlations and incorporating them into novel algorithms. The objective is to
replicate human learning abilities, leveraging experience to accomplish tasks with
minimal external (human) intervention.
A Scientific Implementation for Medical Images to Detect and Classify Various Diseases Using Machine Learning
Page: 248-270 (23)
Author:
DOI: 10.2174/9789815305128124010016
PDF Price: $15
Abstract
Reconstruction of medical images is imperative for the comprehension of
clinical anomalies. Various processes and techniques are employed to generate efficient
anatomical representations of the human body in medical imaging. This technique
provides physicians with a visual depiction of internal organs, aiding in the verification
of ongoing treatments, accurate diagnoses, and treatment planning. Medical imaging
encompasses diverse methods such as ultrasound, X-rays, MRI, and CT scans, with the
choice depending on the condition of the ailment, such as kidney stone diseases, breast
cancer, and brain tumors. However, the quality of medical images can becompromised
due to different sources of noise and blurriness. This chapter introduces an advanced
image processing methodology to detect diseases in medical images, particularly brain
tumors, kidney stones, and breast cancer using ultrasound and MRI images. The
proposed approach involves converting RGB medical images into grayscale, removing
labels, and adjusting image intensity to enhance the contrast of biomedical images.
Median filtering is applied to eliminate noise, and the Discrete Wavelet Transform
(DWT) is utilized for brain tumor detection. The filtered medical image output is
subjected to morphological and k-means clustering segmentation. To classify the
images into two categories benign and malignant, Convolutional Neural Network
(CNN) classifiers are employed. The final system analysis involves evaluating,
specificity, accuracy, and sensitivity through the preparation of a confusion matrix. The
classification system demonstrates an accuracy of approximately 95%. This presented
technique holds potential in supporting doctors with early detection for precise patient
treatment.
Exploring the Fundamental Concepts of Machine Learning for Medical Enhancement
Page: 271-306 (36)
Author:
DOI: 10.2174/9789815305128124010017
PDF Price: $15
Abstract
Machine learning (ML), a subset of artificial intelligence (AI), has recently
gained prominence in the technology domain and is driving advancements in the
healthcare system. This innovation enables healthcare professionals to prioritize patient
diagnosis over time-consuming and intricate treatment procedures, significantly
transforming the healthcare sector. Considering the challenges posed by shortages and
high demand for skilled practitioners in healthcare systems, the emergence of machine
learning presents a promising solution. Consequently, it offers hope for countries
grappling with overburdened healthcare systems and a shortage of healthcare
professionals. Utilising healthcare data can provide valuable insights, such as
pinpointing ideal trial samples, gathering extra data points, continually analysing data
from trial participants, and minimising data-related errors. Employing a machine
learning-based approach aids in detecting early symptoms of an epidemic or pandemic,
allowing more time to focus on patient health and care rather than data entry or
information retrieval. This chapter examines the prospects and scope of Machine
Learning in healthcare. The key Machine Learning applications for healthcare are
identified and discussed. The ML-based solutions are utilised to lower overall
healthcare expenses, improve the general efficacy of hospitals and healthcare systems,
and provide a variety of treatment alternatives. Machine learning will soon influence
hospitals and doctors.
Introduction
Prediction in Medicine: The Impact of Machine Learning on Healthcare explores the transformative power of advanced data analytics and machine learning in healthcare. This comprehensive guide covers predictive analysis, leveraging electronic health records (EHRs) and wearable devices to optimize patient care and healthcare planning. Key topics include disease diagnosis, risk assessment, and precision medicine advancements in cardiovascular health and hypertension management. The book also addresses challenges in interpreting clinical data and navigating ethical considerations. It examines the role of AI in healthcare emergencies and infectious disease management, highlighting the integration of diverse data sources like medical imaging and genomic data. Prediction in Medicine is essential for students, researchers, healthcare professionals, and general readers interested in the future of healthcare and technological innovation.