Preface
Page: i-ii (2)
Author: Shashank Awasthi, Mahaveer Singh Naruka, Satya Prakash Yadav and Victor Hugo C. de Albuquerque
DOI: 10.2174/9789815136531123010001
IoT Based Website for Identification of Acute Lymphoblastic Leukemia using DL
Page: 1-15 (15)
Author: R. Ambika*, S. Thejaswini, N. Ramesh Babu, Tariq Hussain Sheikh, Nagaraj Bhat and Zafaryab Rasool
DOI: 10.2174/9789815136531123010003
PDF Price: $15
Abstract
A form of cancer known as leukemia, attacks the body's blood cells and
bone marrow. This happens when cancer cells multiply rapidly in the bone marrow.
The uploaded image is analyzed by the website, and if leukemia is present, the user is
notified-a collection of pictures depicting leukemia as well as healthy bones and
blood. Once collected from Kaggle, the data is preprocessed using methods like image
scaling and enhancement. To create a Deep Learning (DL) model, we use the VGG-16
model. The processed data is used to “train” the model until optimal results are
achieved. A Hypertext Markup Language (HTML) based website is built to showcase
the model. Using a DL model, this website returns a response indicating whether or not
the user's uploaded photograph shows signs of leukemia. The primary aim of this site is
to lessen the likelihood that cancer cells may multiply while the patient waits for test
results or is otherwise unaware of their condition. Waiting for results after a leukemia
test can cause further stress and even other health problems, even if the person is found
to be leukemia-free. This problem can be fixed if this website is used as a screening
tool for leukemia.
AI and IoT-based Intelligent Management of Heart Rate Monitoring Systems
Page: 16-32 (17)
Author: Vedanarayanan Venugopal*, Sujata V. Mallapur, T.N.R. Kumar, V. Shanmugasundaram, M. Lakshminarayana and Ajit Kumar
DOI: 10.2174/9789815136531123010004
PDF Price: $15
Abstract
The Heart Rate Monitoring system is developed using Artificial Intelligence (ANN) and Internet of Things technology to detect the heartbeat and SpO2 of the patient to monitor the risk of heart attack and also make the person do regular checkups. Health monitoring is very important to us to make sure our health is in which condition. The proposed framework examines the sources of information gathered from sensors fit with the patients to discover the crisis circumstance. The IoT technology is employed; it helps anyone monitor the patient's health from anywhere. A deep learning algorithm such as ANN is utilized to identify whether the person’s health is normal or abnormal. In case an abnormality in health is noticed, an alert will be popped out. The proposed framework with artificial intelligence and IoT can reduce the death occurring due to heart rate, and other related issues can also be avoided.
Deep Learning Applications for IoT in Healthcare Using Effects of Mobile Computing
Page: 33-49 (17)
Author: Koteswara Rao Vaddempudi*, K.R. Shobha, Ahmed Mateen Buttar, Sonu Kumar, C.R. Aditya and Ajit Kumar
DOI: 10.2174/9789815136531123010005
PDF Price: $15
Abstract
Diabetes is a chronic ailment characterized by abnormal blood glucose
levels. Diabetes is caused by insufficient insulin synthesis or by cells' insensitivity to
insulin activity. Glucose is essential to health since it is the primary source of energy
for the cells that make up a person's muscles and tissues. On the condition that if a
person has diabetes, his or her body either does not create enough insulin or cannot
utilize the insulin that is produced. When there isn't enough insulin or cells stop
responding to insulin, many dextroses accumulate in the person's vascular framework.
As time passes, this could lead to diseases such as kidney disease, vision loss, and
coronary disease. Although there is no cure for diabetes, losing weight, eating
nutritious foods, being active, and closely monitoring the diabetes level can all assist.
In this research, we used Artificial Neural Network to create a Deep Learning (DL)
model for predicting Diabetes. Then it was validated using an accuracy of 92%. In
addition, with the help of the MIT website, a mobile application was constructed. This
project will now assist in predicting the effects of diabetes and deliver personalized
warnings. Early detection of pre-diabetes can be extremely beneficial to patients since
studies have shown that symptoms of early diabetic difficulties frequently exist at the
time of diagnosis.
Innovative IoT-Based Wearable Sensors for the Prediction & Analysis of Diseases in the Healthcare Sector
Page: 50-64 (15)
Author: Koteswara Rao Vaddempudi, Abdul Rahman H Ali, Abdullah Al-Shenqiti, Christopher Francis Britto, N. Krishnamoorthy and Aman Abidi*
DOI: 10.2174/9789815136531123010006
PDF Price: $15
Abstract
Health monitoring may be required regularly in everyday life, which might
help predict the significant health consequences. Accurate surveillance is required for
effective health parameters like temperature, stress, heart rate and blood pressure (BP)
in the medical and healthcare domains. The Ideal health-related characteristics for
efficient persistent health monitoring are established in this study. The primary goal of
the device is to monitor the health parameters of a person in everyday life, facilitating
psycho-physiological supervision to examine the relationship between underlying
emotional states, including changing stress levels, and the progression and prognosis of
cardiovascular disease. Non-invasive sensors are employed here to observe the
mentioned health-related variables. The observed data will be stored in the cloud for
further processing. IoT technology has been used to process and store the measured
parameters in the cloud. At the same time, the device will give a notification in the
form of an alarm to the concerned person. The data can be frequently monitored by the
guardian and the concerned doctor. This may help to keep an eye on the people even if
they are far away from the person and the stored data can be viewed at any time from
anywhere. Thus, the wearable device will record the health parameters of a person,
which may assist them to know their mental and physical health, as well as give alerts in case of abnormalities. Implementation of this system will be helpful for the
people to get an awareness about their health condition and also make them stay
healthy.
Construction and Evaluation of Deep Neural Network-based Predictive Controller for Drug Preparation
Page: 65-82 (18)
Author: K. Sheela Sobana Rani, Dattathreya, Shubhi Jain, Nayani Sateesh, M. Lakshminarayana and Dimitrios Alexios Karras*
DOI: 10.2174/9789815136531123010007
PDF Price: $15
Abstract
The evaporator used in the pharmaceutical industry is for drug preparation.
The purpose of the evaporator in drug manufacturing is to extract the water content in
the material through the heating process. In this research, the SISO evaporator is taken,
which contains temperature as input and dry matter content as output. The
mathematical modelling of the drug preparation evaporator is done with the help of the
system identification method. Controlling and maintaining the temperature inside an
evaporator is a tedious process. In this regard, the Neural Network predictive controller
(NNPC) is designed and implemented for drug preparation. It helps to predict the
future performance of the evaporator and tune the control signal based on that. The
setpoint tracking challenge is given to the designed controller. For analysing the
performance of the controller, the error metrics, such as integral square error (ISE),
integral absolute error (IAE), integral time square error (ITSE), and integral time,
absolute error (ITAE), are employed. The time-domain specification, such as rise time,
settling time, and overshoot, is also used to better understand controller performance.
From the above two analyses, the conclusion is made that the predictive controller is
performing well in comparison with the conventional PID controller in the drug
preparation pharmaceutical industry.
Machine Learning based Predictive Analysis and Algorithm for Analysis Severity of Breast Cancer
Page: 83-97 (15)
Author: B. Radha*, Chandra Sekhar Kolli, K R Prasanna Kumar, Perumalraja Rengaraju, S. Kamalesh and Ahmed Mateen Buttar
DOI: 10.2174/9789815136531123010008
PDF Price: $15
Abstract
Breast cancer is the 2nd frequent occurrence of cancer among women, after
skin cancer, according to the American Cancer Society. By using mammography, it is
possible to detect breast cancer before it has spread to other parts of the body. It
primarily affects females, though males can be affected as well. Early identification of
breast cancer improves survival chances significantly, however, the detection
procedure remains difficult in clinical studies. To solve this problem, a Machine
Learning (ML) algorithm is used to detect breast cancer in mammogram images. In this
study, 100 images from the mini-MIAS mammogram database were used, 50 of which
were malignant and 50 of which were benign breast cancer mammograms. Before
training the model, the sample image datasets are pre-processed using numerous
techniques. The required features are then extracted from the sample images using
Feature Extraction (FE) techniques, such as Daubechies (DB4) and HAAR. Finally, the
extracted features are fed into ML classifiers such as Linear Discriminant Analysis
(LDA), Support Vector Machine (SVM), and Random Forest (RF) to create a model.
Several performance metrics are used to evaluate FE and classification. According to
the results of the analysis, the HAAR FE with the RF model is the ideal combination,
with an accuracy level of 91%.
Glaucoma Detection Using Retinal Fundus Image by Employing Deep Learning Algorithm
Page: 98-113 (16)
Author: K.T. Ilayarajaa, M. Sugadev, Shantala Devi Patil, V. Vani, H. Roopa and Sachin Kumar*
DOI: 10.2174/9789815136531123010009
PDF Price: $15
Abstract
Glaucoma is an eye disease that can result in permanent blindness if not
detected and treated in the early stages of the disease. The worst part of Glaucoma is
that it does not come up with a lot of visible symptoms, instead, it can go from the
preliminary stage to a serious issue quickly. A Deep Learning (DL) model is capable of
detecting the presence of Glaucoma by analyzing the image of the retina which is
uploaded by the user. In this research, two DL algorithms were used to detect the
presence of Glaucoma in the uploaded image. The DL algorithms include the
convolutional neural network or the CNN and the transfer learning algorithm. The
transfer learning algorithm is implemented by the VGG-19 model. Once two DL
models were developed using the above-mentioned algorithms, the models were trained
and tested using the images of the retina. The trained models are tested to find the
better model. The efficiency of the model is measured based on some metrics. These
metrics include the True Positive (TP), True Negative (TN), False Positive (FP), and
False Negative (FN). Using these metrics, the true positive rate, the true negative rate,
the false-positive rate, and the false-negative rate are calculated. From the above
values, the DL algorithm, which is more efficient than the other one in identifying
Glaucoma, can be found.
Texture Analysis-based Features Extraction & Classification of Lung Cancer Using Machine Learning
Page: 114-128 (15)
Author: Korla Swaroopa*, N. Chaitanya Kumar, Christopher Francis Britto, M. Malathi, Karthika Ganesan and Sachin Kumar
DOI: 10.2174/9789815136531123010010
PDF Price: $15
Abstract
Lung cancer is a form of carcinoma that develops as a result of aberrant cell
growth or mutation in the lungs. Most of the time, this occurs due to daily exposure to
hazardous chemicals. However, this is not the only cause of lung cancer; additional
factors include smoking, indirect smoke exposure, family medical history, and so on.
Cancer cells, unlike normal cells, proliferate inexorably and cluster together to create
masses or tumors. The symptoms of this disease do not appear until cancer cells have
moved to other parts of the body and are interfering with the healthy functioning of
other organs. As a solution to this problem, Machine Learning (ML) algorithms are
used to diagnose lung cancer. The image datasets for this study were obtained from
Kaggle. The images are preprocessed using various approaches before being used to
train the image model. Texture-based Feature Extraction (FE) algorithms such as
Generalized Low-Rank Models (GLRM) and Gray-level co-occurrence matrix
(GLCM) are then used to extract the essential characteristics from the image dataset.
To develop a model, the collected features are given into ML classifiers like the
Support Vector Machine (SVM) and the k-nearest neighbor's algorithm (k-NN). To evaluate FE and classification, several performance metrics are used, such as accuracy, error rate, sensitivity specificity, and so on.
Implementation of the Deep Learning-based Website For Pneumonia Detection & Classification
Page: 129-143 (15)
Author: V. Vedanarayanan, Nagaraj G. Cholli, Merin Meleet, Bharat Maurya, G. Appasami and Madhu Khurana*
DOI: 10.2174/9789815136531123010011
PDF Price: $15
Abstract
It is often difficult to diagnose several lung illnesses, such as atelectasis and
cardiomegaly, as well as Pneumonia, in hospitals due to a scarcity of radiologists who
are educated in diagnostic imaging. If pneumonia is diagnosed early enough, the
survival rate of pulmonary patients suffering from the disease can be improved. Most
of the time, chest X-ray (CXR) pictures are used to detect and diagnose pneumonia.
When it comes to detecting pneumonia on CXR images, even an experienced
radiologist may have difficulty. It is vital to have an automated diagnostic system to
improve the accuracy of diagnostic results. It is estimated that automated pneumonia
detection in energy-efficient medical systems has a substantial impact on the quality
and cost of healthcare, as well as on response time. To detect pneumonia, we employed
deep transfer learning techniques such as ResNet-18 and VGG-16. Each of the model's
four standard metrics, namely accuracy, precision, recall, and f1-score, are used to
evaluate. The best model is established by the use of metrics. To make pneumonia
detection simple, the website is designed by employing the best model.
Design and Development of Deep Learning Model For Predicting Skin Cancer and Deployed Using a Mobile App
Page: 144-158 (15)
Author: Shweta M Madiwal*, M. Sudhakar, Muthukumar Subramanian, B. Venkata Srinivasulu, S. Nagaprasad and Madhu Khurana
DOI: 10.2174/9789815136531123010012
PDF Price: $15
Abstract
Melanoma, the deadliest form of skin cancer, is becoming more common
every year, according to the American Cancer Society. As a result of the artifacts, low
contrast, and similarity to other lesions, such as moles and scars on the skin, diagnosing
skin cancer from the lesions might be difficult. Skin cancer can be diagnosed using a
variety of techniques, including dermatology, dermoscopic examination, biopsy and
histological testing. Even though the vast majority of skin cancers are non-cancerous
and do not constitute a threat to survival, certain more malignant tumors can be fatal if
not detected and treated on time. In reality, it is not feasible for every patient to have a
dermatologist do a complete examination of his or her skin at every visit to the doctor's
office or clinic. To solve this challenge, numerous investigations are being conducted
to provide computer-aided diagnoses. In this work, skin cancer can be predicted from
an image of the skin using deep learning techniques such as convolutional neural
networks. The accuracy and loss functions of the model are used to evaluate its overall
performance. The mobile app is created to detect skin cancer using the developed
model. As soon as the images have been submitted, the app can communicate with the
user about their progress.
Feature Extraction and Diagnosis of Dementia using Magnetic Resonance Imaging
Page: 159-175 (17)
Author: Praveen Gupta*, Nagendra Kumar, Ajad, N. Arulkumar and Muthukumar Subramanian
DOI: 10.2174/9789815136531123010013
PDF Price: $15
Abstract
Dementia is a state of mind in which the sufferer tends to forget important
data like memories, language, etc.. This is caused due to the brain cells that are
damaged. The damaged brain cells and the intensity of the damage can be detected by
using Magnetic Resonance Imaging. In this process, two extraction techniques, Gray
Level Co-Occurrence Matrix (GLCM) and the Gray Level Run-Length matrix
(GLRM), are used for the clear extraction of data from the image of the brain. Then the
data obtained from the extraction techniques are further analyzed using four machine
learning classifiers named Support Vector Machine (SVM), K-Nearest Neighbor
(KNN), Random Forest (RF), and the combination of two classifiers (SVM+KNN).
The results are further analyzed using a confusion matrix to find accuracy, precision,
TPR/FPR - True and False Positive Rate, and TNR/FNR – True and False Negative
Rate. The maximum accuracy of 93.53% is obtained using the GLRM Feature
Extraction (FE) technique with the combination of the SVM and KNN algorithm.
Deep Learning-Based Regulation of Healthcare Efficiency and Medical Services
Page: 176-190 (15)
Author: T. Vamshi Mohana*, Mrunalini U. Buradkar, Kamal Alaskar, Tariq Hussain Sheikh and Makhan Kumbhkar
DOI: 10.2174/9789815136531123010014
PDF Price: $15
Abstract
There has been an increase in new diseases in recent years, which has had
both economic and societal consequences. Patients in the modern environment require
not only constant monitoring but also all-encompassing smart healthcare solutions.
These systems keep track of the patient's health, store data, and send alerts when
critical conditions arise. Healthcare may be considerably improved with the use of
Artificial Intelligence and Machine Learning (ML) systems. These systems can help
with earlier diagnosis of diseases, as well as more specific treatment plans. As big data,
the Internet of Things with many more smart technologies grows more widespread;
deep learning is becoming more popular. Due to the apparent rising complexity and
volume of data in healthcare, artificial intelligence (AI) will be used more frequently.
This work aims to develop a deep learning-based smart healthcare monitoring system.
This system keeps track of patients' health, analyses numerous parameters, categorizes
data, and organizes requirements. The algorithm using the python program is
developed and discussed to track the health of several patients with various illnesses.
This method also aids in the categorization of data, organization of pharmacological
requirements. This approach yields satisfactory performance, and the results are also
provided.
An Efficient Design and Comparison of Machine Learning Model for Diagnosis of Cardiovascular Disease
Page: 191-206 (16)
Author: Dillip Narayan Sahu*, G. Sudhakar, Chandrakala G Raju, Hemlata Joshi and Makhan Kumbhkar
DOI: 10.2174/9789815136531123010015
PDF Price: $15
Abstract
Cardiovascular disease has a significant global impact. Cardiovascular
disease is the primary cause of disability and mortality in most developed countries.
Cardiovascular disease is a condition that disturbs the structures and functionality of
the heart and can also be called heart disease. Cardiovascular diseases require more
precise, accurate, and reliable detection and forecasting because even a small
inaccuracy might lead to fatigue or mortality. There are very few death occurrences
related to cardio sickness, and the amount is expanding rapidly. Predicting this disease
at its early stage can be done by employing Machine Learning (ML) algorithms, which
may help reduce the number of deaths. Data pre-processing can be employed here to
eliminate randomness in data, replace missing data, fill in default values if appropriate,
and categorize features for forecasting and making decisions at various levels. This
research investigates various parameters that are related to the cause of heart disease.
Several models discussed here will come under the supervised learning type of
algorithms like Support Vector Machine (SVM), K-nearest neighbor (KNN), and Naïve
Bayes (NB) algorithm. The existing dataset of heart disease patients from the Kaggle
has been used for the analysis. The dataset includes 300 instances and 13 parameters
and 1 label are used for prediction and testing the performance of various algorithms.
Predicting the likelihood that a given patient will be affected by the cardiac disease is the goal of this research. The most important purpose of the study is to make better
efficiency and precision for the detection of cardiovascular disease in which the target
output ultimately matters whether or not a person has heart disease.
Deep Learning Based Object Detection Using Mask R-CNN
Page: 207-221 (15)
Author: Vinit Gupta*, Aditya Mandloi, Santosh Pawar, T.V Aravinda and K.R Krishnareddy
DOI: 10.2174/9789815136531123010016
PDF Price: $15
Abstract
Nowadays, an image must be verified or analyzed keenly for further
processing methods. Few numbers of images can be analyzed manually for a particular
object or a human being. But when millions and millions of images are present in a
dataset, and every single one of them must be verified and classified based on the
objects present in the image, it is necessary to find an algorithm or a technique to assist
this process. Of many types and applications of object detection, this research aims at
pedestrian detection. Pedestrian detection is a special way that only aims to detect the
human beings in the uploaded image. The Mask R-CNN algorithm is used in pedestrian
detection. The Mask R-CNN model is a Deep Learning (DL) model that can detect a
certain object from an image and can also be used for image augmentation. The Mask
R-CNN stands for Mask Regional Convolutional Neural Network (CNN). This is one
of the classification techniques which can be designed using the Convolutional
Network theories. The Mask R-CNN algorithm is the updated version of the Faster RCNN. The main difference between the faster R-CNN and the Mask R-CNN is that the
mask R-CNN can bind the borders of the object detected while the faster R-CNN uses a
box to identify the object. One of the major advantages of mask R-CNN is that it can
provide high-quality image augmentation and is also one of the fastest image
segmentation algorithms. This model can be easily implemented when compared to
other object detection techniques. Python contains various inbuilt dependencies which
can be installed with the help of repositories. These dependencies are used to design the
model. The model is then trained and tested with various inputs for better accuracy.
Image segmentation is used in various fields like medical imaging, video surveillance,
traffic control, etc., so the mask R-CNN technique would be an extremely efficient DL
algorithm.
Design and Comparison Of Deep Learning Architecture For Image-based Detection of Plant Diseases
Page: 222-239 (18)
Author: Makarand Upadhyaya*, Naveen Nagendrappa Malvade, Arvind Kumar Shukla, Ranjan Walia and K Nirmala Devi
DOI: 10.2174/9789815136531123010017
PDF Price: $15
Abstract
Agriculture provides a living for half of India's people. The infection in
crops poses a danger to food security, but quick detection is hard due to a lack of
facilities. Nowadays, Deep learning will automatically diagnose plant diseases from
raw image data. It assists the farmer in determining plant health, increasing
productivity, deciding whether pesticides are necessary, and so on. The potato leaf is
used in this study for analysis. Among the most devastating crop diseases is potato leaf
blight, which reduces the quantity and quality of potato yields, significantly influencing
both farmers and the agricultural industry as a whole. Potato leaves taken in the
research contain three categories, such as healthy, early blight, and late blight.
Convolution Neural Network (CNN), and Convolution Neural Network- Long Short
Term Memory(CNN-LSTM) are two neural network models employed to classify plant
diseases. Various performance evaluation approaches are utilized to determine the best
model.
Discernment of Paddy Crop Disease by Employing CNN and Transfer Learning Methods of Deep Learning
Page: 240-254 (15)
Author: Arvind Kumar Shukla*, Naveen Nagendrappa Malvade, Girish Saunshi, P. Rajasekar and S.V. Vijaya Karthik
DOI: 10.2174/9789815136531123010018
PDF Price: $15
Abstract
Agriculture is the backbone of human civilization since it is a requirement of
every living entity. Paddy agriculture is extremely important to humans, particularly in
Asia. Farmers are currently facing a deficit in agricultural yield owing to a variety of
factors, one of which is illness. The composition of paddy crop diseases is complicated,
and their presentation in various species is highly similar, making classification
challenging. These agricultural infections must be discovered and diagnosed as soon as
feasible to avoid disease transmission. The disease significantly impacts crop
productivity, and early detection of paddy infections is critical to avoiding these
consequences. These issues arise as a result of a lack of awareness regarding health.
Identifying the disease needs the best expertise or previous knowledge to regulate it.
This is both difficult and costly. To address the aforementioned problem, a Deep
Learning (DL) model was created utilizing a Convolutional Neural Network (CNN)
and the transfer learning approach. The model is trained using an image of a paddy
crop as input. By comparing metrics like accuracy and loss, the optimum technique is
identified.
Deploying Deep Learning Model on the Google Cloud Platform For Disease Prediction
Page: 255-268 (14)
Author: C.R. Aditya*, Chandra Sekhar Kolli, Korla Swaroopa, S. Hemavathi and Santosh Karajgi
DOI: 10.2174/9789815136531123010019
PDF Price: $15
Abstract
A brain tumor is defined by the proliferation of aberrant brain cells, some of
which may progress to malignancy. A brain tumor is usually diagnosed via a magnetic
resonance imaging (MRI) examination. These images demonstrate the recently
observed aberrant brain tissue proliferation. Several academics have examined the use
of machine learning and Deep Learning (DL) algorithms to diagnose brain tumors
accurately A radiologist may also profit from these forecasts, which allow them to
make more timely decisions. The VGG-16 pre-trained model is employed to detect the
brain tumor in this study. Using the outcomes of training and validation, the model is
completed by employing two critical metrics: accuracy and loss. Normal people
confront numerous challenges in scheduling a doctor's appointment (financial support,
work pressure, lack of time). There are various possibilities for bringing doctors to
patients' homes, including teleconferencing and other technologies. This research
creates a website that allows people to upload a medical image and have the website
predict the ailment. The Google Cloud Platform (GCP) will be utilized to install the DL
model due to its flexibility and compatibility. The customized brain tumor detection
website is then constructed utilizing HTML code.
Classification and Diagnosis of Alzheimer’s Disease using Magnetic Resonance Imaging
Page: 269-284 (16)
Author: K.R. Shobha*, Vaishali Gajendra Shende, Anuradha Patil, Jagadeesh Kumar Ega and Kaushalendra Kumar
DOI: 10.2174/9789815136531123010020
PDF Price: $15
Abstract
Different types of brain illnesses can affect many parts of the brain at the
same time. Alzheimer's disease is a chronic illness characterized by brain cell
deterioration, which results in memory loss. Amnesia and ambiguity are two of the
most prevalent Alzheimer's disease symptoms, and both are caused by issues with
cognitive reasoning. This paper proposes several feature extractions as well as Machine
Learning (ML) algorithms for disease detection. The goal of this study is to detect
Alzheimer's disease using magnetic resonance imaging (MRI) of the brain. The
Alzheimer's disease dataset was obtained from the Kaggle website. Following that, the
unprocessed MRI picture is subjected to several pre-processing procedures. Feature
extraction is one of the most crucial stages in extracting important attributes from
processed images. In this study, wavelet and texture-based methods are used to extract
characteristics. Gray Level Co-occurrence Matrix (GLCM) is utilized for the texture
approach, and HAAR is used for the wavelet method. The extracted data from both
procedures are then fed into ML algorithms. The Support Vector Machine (SVM) and
Linear Discriminant Analysis (LDA) are used in this investigation. The values of the
confusion matrix are utilized to identify the best technique.
Subject Index
Page: 285-290 (6)
Author: Shashank Awasthi, Mahaveer Singh Naruka, Satya Prakash Yadav and Victor Hugo C. de Albuquerque
DOI: 10.2174/9789815136531123010021
Introduction
The book aims to provide a deeper understanding of the synergistic impact of Artificial intelligence (AI) and the Internet of Things (IoT) for disease detection. It presents a collection of topics designed to explain methods to detect different diseases in humans and plants. Chapters are edited by experts in IT and machine learning, and are structured to make the volume accessible to a wide range of readers. Key Features: - 17 Chapters present information about the applications of AI and IoT in clinical medicine and plant biology - Provides examples of algorithms for heart diseases, Alzheimer’s disease, cancer, pneumonia and more - Includes techniques to detect plant disease - Includes information about the application of machine learning in specific imaging modalities - Highlights the use of a variety of advanced Deep learning techniques like Mask R-CNN - Each chapter provides an introduction and literature review and the relevant protocols to follow The book is an informative guide for data and computer scientists working to improve disease detection techniques in medical and life sciences research. It also serves as a reference for engineers working in the healthcare delivery sector.