Contributors |
|
xiii | |
Preface |
|
xvii | |
Acknowledgments |
|
xix | |
Chapter 1 Bio-Inspired Algorithms for Big Data Analytics: A Survey, Taxonomy, and Open Challenges |
|
1 | (18) |
|
|
|
|
1 | (1) |
|
1.1.1 Dimensions of Data Management |
|
|
2 | (1) |
|
1.2 Big Data Analytical Model |
|
|
2 | (2) |
|
1.3 Bio-Inspired Algorithms for Big Data Analytics: A Taxonomy |
|
|
4 | (6) |
|
1.3.1 Evolutionary Algorithms |
|
|
4 | (2) |
|
1.3.2 Swarm-Based Algorithms |
|
|
6 | (1) |
|
1.3.3 Ecological Algorithms |
|
|
7 | (3) |
|
|
10 | (1) |
|
1.4 Future Research Directions and Open Challenges |
|
|
10 | (4) |
|
1.4.1 Resource Scheduling and Usability |
|
|
10 | (3) |
|
1.4.2 Data Processing and Elasticity |
|
|
13 | (1) |
|
1.4.3 Resilience and Heterogeneity in Interconnected Clouds |
|
|
13 | (1) |
|
1.4.4 Sustainability and Energy-Efficiency |
|
|
13 | (1) |
|
1.4.5 Data Security and Privacy Protection |
|
|
13 | (1) |
|
1.4.6 IoT-Based Edge Computing and Networking |
|
|
13 | (1) |
|
1.5 Emerging Research Areas in Bio-Inspired Algorithm-Based Big Data Analytics |
|
|
14 | (1) |
|
1.5.1 Container as a Service (CaaS) |
|
|
14 | (1) |
|
1.5.2 Serverless Computing as a Service (SCaaS) |
|
|
14 | (1) |
|
1.5.3 Blockchain as a Service (BaaS) |
|
|
14 | (1) |
|
1.5.4 Software-defined Cloud as a Service (SCaaS) |
|
|
14 | (1) |
|
1.5.5 Deep Learning as a Service (DLaaS) |
|
|
14 | (1) |
|
1.5.6 Bitcoin as a Service (BiaaS) |
|
|
15 | (1) |
|
1.5.7 Quantum Computing as a Service (QCaaS) |
|
|
15 | (1) |
|
1.6 Summary and Conclusions |
|
|
15 | (1) |
|
|
15 | (1) |
|
|
15 | (1) |
|
|
16 | (1) |
|
|
17 | (2) |
Chapter 2 Big Data Analytics Challenges and Solutions |
|
19 | (24) |
|
|
|
19 | (4) |
|
2.1.1 Consumable Massive Facts Analytics |
|
|
19 | (2) |
|
2.1.2 Allotted Records Mining Algorithms |
|
|
21 | (1) |
|
|
21 | (1) |
|
2.1.4 Facts Aggregation Challenges |
|
|
21 | (1) |
|
2.1.5 Statistics Preservation-Demanding Situations |
|
|
22 | (1) |
|
2.1.6 Information Integration Challenges |
|
|
22 | (1) |
|
2.2 Records Analysis Challenges |
|
|
23 | (2) |
|
2.2.1 Scale of the Statistics |
|
|
24 | (1) |
|
2.2.2 Pattern Interpretation Challenges |
|
|
24 | (1) |
|
2.3 Arrangements of Challenges |
|
|
25 | (1) |
|
2.3.1 User Intervention Method |
|
|
25 | (1) |
|
2.3.2 Probabilistic Method |
|
|
25 | (1) |
|
2.3.3 Defining and Detecting Anomalies in Human Ecosystems |
|
|
26 | (1) |
|
2.4 Demanding Situations in Managing Huge Records |
|
|
26 | (1) |
|
2.5 Massive Facts Equal Large Possibilities |
|
|
27 | (9) |
|
2.5.1 Present Answers to Challenges for the Quantity Mission |
|
|
28 | (1) |
|
2.5.2 Image Mining and Processing With Big Data |
|
|
29 | (2) |
|
2.5.3 Potential Answers for Velocity Trouble |
|
|
31 | (2) |
|
2.5.4 Ability Solutions for Scalability Assignments |
|
|
33 | (3) |
|
|
36 | (1) |
|
|
37 | (1) |
|
|
38 | (1) |
|
|
39 | (2) |
|
|
41 | (2) |
Chapter 3 Big Data Analytics in Healthcare: A Critical Analysis |
|
43 | (16) |
|
|
|
43 | (1) |
|
|
44 | (1) |
|
|
45 | (1) |
|
|
45 | (1) |
|
|
45 | (1) |
|
3.3.3 Semistructured Data |
|
|
45 | (1) |
|
|
45 | (1) |
|
3.3.5 Patient Behavior and Sentiment Data |
|
|
45 | (1) |
|
3.3.6 Clinical Data and Clinical Notes |
|
|
45 | (1) |
|
3.3.7 Clinical Reference and Health Publication Data |
|
|
46 | (1) |
|
3.3.8 Administrative and External Data |
|
|
46 | (1) |
|
3.4 Medical Image Processing and its Role in Healthcare Data Analysis |
|
|
46 | (2) |
|
3.5 Recent Works in Big Data Analytics in Healthcare Data |
|
|
48 | (3) |
|
3.6 Architectural Framework and Different Tools for Big Data Analytics in Healthcare Big Data |
|
|
51 | (3) |
|
3.6.1 Architectural Framework |
|
|
51 | (1) |
|
3.6.2 Different Tools Used in Big Data Analytics in Healthcare Data |
|
|
52 | (2) |
|
3.7 Challenges Faced During Big Data Analytics in Healthcare |
|
|
54 | (1) |
|
3.8 Conclusion and Future Research |
|
|
55 | (1) |
|
|
55 | (2) |
|
|
57 | (2) |
Chapter 4 Transfer Learning and Supervised Classifier Based Prediction Model for Breast Cancer |
|
59 | (28) |
|
Md. Nuruddin Qaisar Bhuiyan |
|
|
|
|
|
|
|
59 | (1) |
|
|
60 | (1) |
|
4.3 Dataset and Methodologies |
|
|
60 | (4) |
|
4.3.1 Convolution Neural Networks (CNNs/ConvNets) |
|
|
60 | (4) |
|
|
64 | (2) |
|
|
66 | (1) |
|
|
66 | (1) |
|
4.5.2 Dimensionality Reduction |
|
|
66 | (1) |
|
|
67 | (1) |
|
4.5.4 Tuning Hyperparameters of the Classifiers |
|
|
67 | (1) |
|
|
67 | (16) |
|
4.6.1 10-fold Cross Validation Result |
|
|
67 | (1) |
|
4.6.2 Magnification Factor Wise Analysis on Validation Accuracy |
|
|
67 | (4) |
|
4.6.3 Result and Analysis of Test Performance |
|
|
71 | (12) |
|
|
83 | (1) |
|
|
83 | (1) |
|
|
84 | (2) |
|
|
86 | (1) |
Chapter 5 Chronic TTH Analysis by EMG and GSR Biofeedback on Various Modes and Various Medical Symptoms Using IoT |
|
87 | (64) |
|
|
|
|
|
|
|
|
|
5.1 Introduction and Background |
|
|
87 | (7) |
|
|
87 | (2) |
|
5.1.2 Mental Health Introduction |
|
|
89 | (1) |
|
5.1.3 Importance of Mental Health, Stress, and Emotional Needs and Significance of Study |
|
|
89 | (1) |
|
5.1.4 Meaning of Mental Health |
|
|
90 | (1) |
|
|
90 | (1) |
|
5.1.6 Factors Affecting Mental Health |
|
|
91 | (1) |
|
5.1.7 Models of Stress: Three Models in Practice |
|
|
91 | (2) |
|
|
93 | (1) |
|
5.2 Previous Studies (Literature Review) |
|
|
94 | (1) |
|
5.2.1 Tension Type Headache and Stress |
|
|
94 | (1) |
|
5.3 Independent Variable: Emotional Need Fulfillment |
|
|
95 | (1) |
|
5.4 Meditation-Effective Spiritual Tool With Approach of Biofeedback EEG |
|
|
95 | (1) |
|
5.4.1 Mind-Body and Consciousness |
|
|
95 | (1) |
|
5.5 Sensor Modalities and Our Approach |
|
|
96 | (2) |
|
5.5.1 Biofeedback Based Sensor Modalities |
|
|
96 | (1) |
|
|
97 | (1) |
|
|
97 | (1) |
|
|
98 | (1) |
|
5.6 Experiments and Results-Study Plot |
|
|
98 | (4) |
|
5.6.1 Study Design and Source of Data |
|
|
98 | (1) |
|
5.6.2 Study Duration and Consent From Subjects |
|
|
98 | (1) |
|
5.6.3 Sampling Design and Allocation Process |
|
|
98 | (1) |
|
|
98 | (1) |
|
|
99 | (1) |
|
|
99 | (1) |
|
|
100 | (1) |
|
5.6.8 Analgesic Consumption |
|
|
101 | (1) |
|
5.6.9 Assessment of Outcome Variables |
|
|
101 | (1) |
|
|
101 | (1) |
|
|
101 | (1) |
|
5.6.12 Statistical Analysis |
|
|
102 | (1) |
|
|
102 | (1) |
|
5.7 Data Collection Procedure-Guided Meditation as per Fig. 5.7G |
|
|
102 | (1) |
|
5.8 Results, Interpretation and Discussion |
|
|
102 | (43) |
|
5.8.1 The Trend of Average of Frequency |
|
|
108 | (1) |
|
5.8.2 The Trend of Average of Duration |
|
|
109 | (1) |
|
5.8.3 The Trend of Average of Intensity |
|
|
110 | (1) |
|
5.8.4 The Trend of Duration per Cycle With Time |
|
|
111 | (1) |
|
5.8.5 Trend on Correlation of TTH Duration and Intensity |
|
|
112 | (3) |
|
5.8.6 Trend on Correlation of TTH Duration With Occurrence |
|
|
115 | (1) |
|
5.8.7 The Trend of Average of Frequency |
|
|
116 | (2) |
|
5.8.8 The Trend of Average of Duration |
|
|
118 | (1) |
|
5.8.9 The Trend of Average of Intensity |
|
|
119 | (1) |
|
5.8.10 The Trend of Duration per Cycle With Time |
|
|
120 | (1) |
|
5.8.11 Trend on Correlation of TTH Duration and Intensity |
|
|
121 | (2) |
|
5.8.12 Trend on Correlation of TTH Duration With Occurrence |
|
|
123 | (3) |
|
5.8.13 The Trend of Average of Frequency |
|
|
126 | (1) |
|
5.8.14 The Trend of Average Duration |
|
|
127 | (1) |
|
5.8.15 The Trend of Average Intensity |
|
|
128 | (1) |
|
5.8.16 The Trend of Duration per Cycle With Time |
|
|
129 | (1) |
|
5.8.17 Trend on Correlation of TTH Duration and Intensity |
|
|
129 | (3) |
|
5.8.18 Trend on Correlation of TTH Duration With Occurrence |
|
|
132 | (4) |
|
5.8.19 The Trend of Average of Frequency |
|
|
136 | (1) |
|
5.8.20 The Trend of Average of Duration |
|
|
137 | (1) |
|
5.8.21 The Trend of Average Intensity |
|
|
138 | (1) |
|
5.8.22 The Trend of Duration per Cycle With Time |
|
|
139 | (1) |
|
5.8.23 Trend on Correlation of TTH Duration and Intensity |
|
|
140 | (2) |
|
5.8.24 Trend on Correlation of TTH Duration With Occurrence |
|
|
142 | (3) |
|
5.9 Findings in This Chapter |
|
|
145 | (1) |
|
5.10 Future Scope, Limitations, and Possible Applications |
|
|
146 | (1) |
|
|
146 | (1) |
|
5.11.1 Comprehensive Conclusion |
|
|
147 | (1) |
|
|
147 | (1) |
|
|
147 | (2) |
|
|
149 | (2) |
Chapter 6 Multilevel Classification Framework of fMRI Data: A Big Data Approach |
|
151 | (24) |
|
|
|
|
|
|
151 | (3) |
|
|
154 | (3) |
|
|
157 | (9) |
|
|
157 | (1) |
|
|
157 | (1) |
|
|
158 | (1) |
|
6.3.4 Experimental Results |
|
|
159 | (1) |
|
6.3.5 Subject-Dependent Experiments on PS +SP |
|
|
160 | (3) |
|
6.3.6 Subject-Dependent Experiment on PS/SP |
|
|
163 | (3) |
|
|
166 | (5) |
|
6.4.1 Summary of the Subject-Dependent Results |
|
|
166 | (1) |
|
6.4.2 Subject-Independent Experiment |
|
|
166 | (5) |
|
6.5 Conclusion and Future Work |
|
|
171 | (1) |
|
|
172 | (2) |
|
|
174 | (1) |
Chapter 7 Smart Healthcare: An Approach for Ubiquitous Healthcare Management Using IoT |
|
175 | (22) |
|
|
|
|
|
175 | (1) |
|
|
176 | (3) |
|
|
179 | (4) |
|
|
179 | (1) |
|
|
180 | (1) |
|
|
181 | (1) |
|
|
181 | (2) |
|
7.3.5 Prototype Model of the Proposed Work |
|
|
183 | (1) |
|
7.4 Implementation of the Proposed System |
|
|
183 | (6) |
|
7.5 Simulation and Result Discussion |
|
|
189 | (5) |
|
|
194 | (1) |
|
|
195 | (2) |
Chapter 8 Blockchain in Healthcare: Challenges and Solutions |
|
197 | (30) |
|
|
|
|
|
|
|
197 | (3) |
|
|
200 | (1) |
|
8.2 Healthcare Big Data and Blockchain Overview |
|
|
200 | (6) |
|
8.2.1 Healthcare Big Data |
|
|
200 | (2) |
|
|
202 | (4) |
|
8.2.3 How Blockchain Works |
|
|
206 | (1) |
|
8.3 Privacy of Healthcare Big Data |
|
|
206 | (4) |
|
8.3.1 Privacy Right by Country and Organization |
|
|
210 | (1) |
|
8.4 How Blockchain Is Applicable for Healthcare Big Data |
|
|
210 | (7) |
|
|
210 | (2) |
|
8.4.2 Intelligent Data Management |
|
|
212 | (1) |
|
|
212 | (1) |
|
8.4.4 Digital Supply Chain |
|
|
213 | (1) |
|
|
213 | (1) |
|
8.4.6 Interoperability and Data Sharing |
|
|
214 | (1) |
|
8.4.7 Improving Research and Development (R&D) |
|
|
215 | (1) |
|
8.4.8 Fighting Counterfeit Drugs |
|
|
216 | (1) |
|
8.4.9 Collaborative Patient Engagement |
|
|
216 | (1) |
|
8.4.10 Online Access to Longitudinal Data by Patient |
|
|
217 | (1) |
|
8.4.11 Off-Chain Data Storage due to Privacy and Data Size |
|
|
217 | (1) |
|
8.5 Blockchain Challenges and Solutions for Healthcare Big Data |
|
|
217 | (5) |
|
8.5.1 GDPR versus Blockchain |
|
|
218 | (4) |
|
8.6 Conclusion and Discussion |
|
|
222 | (1) |
|
|
222 | (4) |
|
|
226 | (1) |
Chapter 9 Intelligence-Based Health Recommendation System Using Big Data Analytics |
|
227 | (20) |
|
|
|
|
Bhabani Shankar Prasad Mishra |
|
|
|
|
|
227 | (1) |
|
|
228 | (7) |
|
9.2.1 Recommendation System and its Basic Concepts |
|
|
228 | (1) |
|
9.2.2 Phases of Recommendation System |
|
|
228 | (1) |
|
|
229 | (6) |
|
9.3 Health Recommendation System |
|
|
235 | (6) |
|
9.3.1 Designing the Health Recommendation System |
|
|
236 | (1) |
|
|
237 | (2) |
|
9.3.3 Methods to Design HRS |
|
|
239 | (1) |
|
|
240 | (1) |
|
9.4 Proposed Intelligent-Based HRS |
|
|
241 | (2) |
|
9.4.1 Dataset Description |
|
|
242 | (1) |
|
9.4.2 Experimental Result Analysis |
|
|
242 | (1) |
|
9.5 Advantages and Disadvantages of the Proposed Health Recommendation System Using Big Data Analytics |
|
|
243 | (1) |
|
9.6 Conclusion and Future Work |
|
|
244 | (1) |
|
|
245 | (1) |
|
|
246 | (1) |
Chapter 10 Computational Biology Approach in Management of Big Data of Healthcare Sector |
|
247 | (22) |
|
|
|
|
|
|
|
|
247 | (1) |
|
10.2 Application of Big Data Analysis |
|
|
248 | (1) |
|
10.3 Database Management System and Next Generation Sequencing (NGS) |
|
|
249 | (1) |
|
10.4 De novo Assembly, Re-Sequencing, Transcriptomics Sequencing and Epigenetics |
|
|
250 | (3) |
|
10.5 Data Collection, Extraction of Genes, and Screening of Drugs |
|
|
253 | (3) |
|
10.6 Different Algorithms Related to Docking |
|
|
256 | (1) |
|
10.7 Molecular Interactions, Scoring Functions, and Discussion of Some Decking Examples |
|
|
257 | (6) |
|
|
263 | (1) |
|
|
264 | (1) |
|
|
264 | (5) |
Chapter 11 Kidney-Inspired Algorithm and Fuzzy Clustering for Biomedical Data Analysis |
|
269 | (14) |
|
|
|
|
|
|
269 | (2) |
|
11.2 Biological Structure of the Kidney |
|
|
271 | (1) |
|
11.3 Kidney-Inspired Algorithm |
|
|
271 | (1) |
|
|
272 | (2) |
|
|
274 | (3) |
|
11.5.1 Fuzzy C-Means Algorithm |
|
|
274 | (1) |
|
11.5.2 Proposed KA-Based Approach for Biomedical Data Analysis |
|
|
274 | (3) |
|
|
277 | (2) |
|
11.6.1 Evaluation Metrics |
|
|
277 | (1) |
|
11.6.2 Experimental Results |
|
|
277 | (1) |
|
11.6.3 Statistical Validity |
|
|
278 | (1) |
|
|
279 | (1) |
|
|
279 | (1) |
|
|
280 | (3) |
Index |
|
283 | |