• Zamawiaj do paczkomatu
  • Płać wygodnie
  • Obniżka
Human Cancer Diagnosis and Detection Using Exascale Computing

Human Cancer Diagnosis and Detection Using Exascale Computing

9781394197675
932,40 zł
839,20 zł Zniżka 93,20 zł Brutto
Najniższa cena w okresie 30 dni przed promocją: 839,20 zł
Ilość
Od 4 do 6 tygodni

  Dostawa

Wybierz Paczkomat Inpost, Orlen Paczkę, DPD, Pocztę, email (dla ebooków). Kliknij po więcej

  Płatność

Zapłać szybkim przelewem, kartą płatniczą lub za pobraniem. Kliknij po więcej szczegółów

  Zwroty

Jeżeli jesteś konsumentem możesz zwrócić towar w ciągu 14 dni*. Kliknij po więcej szczegółów

Opis
Human Cancer Diagnosis and Detection Using Exascale Computing

The book provides an in-depth exploration of how high-performance computing, particularly exascale computing, can be used to revolutionize cancer diagnosis and detection; it also serves as a bridge between the worlds of computational science and clinical oncology.

Exascale computing has the potential to increase our ability in terms of computation to develop efficient methods for a better healthcare system. This technology promises to revolutionize cancer diagnosis and detection, ushering in an era of unprecedented precision, speed, and efficiency. The fusion of exascale computing with the field of oncology has the potential to redefine the boundaries of what is possible in the fight against cancer.

The book is a comprehensive exploration of this transformative unification of science, medicine, and technology. It delves deeply into the realm of exascale computing and its profound implications for cancer research and patient care. The 18 chapters are authored by experts from diverse fields who have dedicated their careers to pushing the boundaries of what is achievable in the realm of cancer diagnosis and detection. The chapters cover a wide range of topics, from the fundamentals of exascale computing and its application to cancer genomics to the development of advanced imaging techniques and machine learning algorithms. Explored is the integration of data analytics, artificial intelligence, and high-performance computing to move cancer research to the next phase and support the creation of novel medical tools and technology for the detection and diagnosis of cancer.

Audience

This book has a wide audience from both computer sciences (information technology, computer vision, artificial intelligence, software engineering, applied mathematics) and the medical field (biomedical engineering, bioinformatics, oncology). Researchers, practitioners and students will find this groundbreaking book novel and very useful.

Szczegóły produktu
Wiley-Blackwell
103041
9781394197675

Opis

Rok wydania
2024
Numer wydania
1
Oprawa
twarda
Liczba stron
336
Wymiary (mm)
156.00 x 232.00
  • Preface xiii

    1 Evaluating the Impact of Healthcare 4.0 on the Performance of Hospitals 1
    Pramod Kumar, Nitu Maurya, Keerthiraj, Somanchi Hari Krishna, Geetha Manoharan and Anupama Bharti

    1.1 Introduction 2

    1.2 Literature Review 4

    1.3 Methodology 6

    1.3.1 Selection of the Sample and Characterization 6

    1.3.2 Creation of a Data-Gathering Tool and Measures 7

    1.3.3 Inspection of the Conceptions’ Reliability and Validity 8

    1.3.4 Data Evaluation 8

    1.4 Result and Discussion 9

    1.5 Conclusion 11

    References 12

    2 Human Breast Cancer Classification Employing the Machine Learning Ensemble 19
    Sreenivas Mekala, S. Srinivasulu Raju, M. Gomathi, Naga Venkateshwara Rao K., Kothandaraman D. and Saurabh Sharma

    2.1 Introduction 20

    2.1.1 Breast Cancer Symptoms and Signs 20

    2.1.2 Breast Cancer Risk Factors 21

    2.1.3 Disease Prediction Using Machine Learning 22

    2.2 Literature Review 22

    2.3 Methodology 24

    2.3.1 Bayesian Network 24

    2.3.2 Radial Basis Function 25

    2.3.3 Ensemble Learning 26

    2.3.4 The Suggested Algorithm 27

    2.4 Results and Discussion 28

    2.5 Conclusion 31

    References 31

    3 Multi-Objective Differential Development Using DNN for Multimodality Medical Image Fusion 35
    M. Ranjith Kumar, Abhishek Dondapati, Dilip Kumar Sharma, Prakash Pareek, Rajchandar K. and S. Shalini

    3.1 Introduction 36

    3.2 Literature Review 37

    3.3 Methodology 38

    3.3.1 Non-Subsampled Contourlet Transform 40

    3.3.2 Deep Xception Mode Feature Extraction 40

    3.3.3 Differential Evolutions with Several Objectives for Feature Selection 41

    3.3.4 Fusion of High-Frequency Bands 41

    3.4 Result and Discussion 41

    3.4.1 Visual Evaluation 41

    3.4.2 Quantitative Research 43

    3.5 Conclusion 47

    References 47

    4 Multimodal Deep Learning Analysis for Biomedical Data Fusion 53
    Divyanshu Sinha, B. Jogeswara Rao, D. Khalandar Basha, Parvathapuram Pavan Kumar, N. Shilpa and Saurabh Sharma

    4.1 Introduction 54

    4.2 Literature Review 56

    4.3 Methodology 58

    4.3.1 Early Fusion 59

    4.3.2 Intermediate Fusion 60

    4.3.3 Late Fusion 62

    4.4 Results and Discussion 62

    4.5 Conclusion 64

    References 65

    5 Developing Robot-Based Neurorehabilitation Exercises Using a Teaching–Training Process 71
    W. Vinu, Sonali Vyas, A. Chandrashekhar, T. Ch. Anil Kumar, T. Raghu and Mohit Tiwari

    5.1 Introduction 72

    5.1.1 Research Gap 74

    5.1.2 Research Aim 74

    5.2 Literature Review 74

    5.3 Research Methodology 77

    5.4 Results 78

    5.5 Conclusion 81

    5.6 Future Research Directions 82

    References 83

    6 Investigation on Introduction to Heterogeneous Exascale Computing in the Medical Field 87
    M. Pyingkodi, Raju Shanmugam, Dilip Kumar Sharma, Deepesh Lall, S. Deepan and B. Dasu

    6.1 Introduction 88

    6.1.1 Research Gap 89

    6.2 Literature Review 89

    6.3 Research Methodology 92

    6.4 Results and Discussion 94

    6.5 Conclusion 96

    6.6 Future Research Direction 96

    References 97

    7 Adoption of Cloud Computing in the Healthcare Field Using the SEM Approach 101
    R. Chithambaramani, C. Balakumar, Dilip Kumar Sharma, Keyur Patel, Bhavana Jamalpur and M. R. Arun

    7.1 Introduction 102

    7.1.1 Research Gap 103

    7.1.2 Research Aim 103

    7.2 Literature Review 104

    7.3 Research Methodology 106

    7.3.1 Research Hypothesis 107

    7.3.2 Data Analysis 107

    7.4 Results and Discussion 107

    7.5 Implications 110

    7.6 Conclusion 110

    7.7 Future Research Directions 111

    References 112

    8 Chest X-Ray Analysis for COVID-19 Diagnosis Using an Exascale Computation and Machine Learning Framework 115
    M. Dhinakaran, S. Deivasigamani, Saikat Kar, Nishakar Kankalla, V. Malathy and Saurabh Sharma

    8.1 Introduction 116

    8.2 Literature Review 117

    8.3 Research Methodology 119

    8.4 Analysis and Discussion 120

    8.5 Conclusion 130

    References 131

    9 3D-Printed Human Organ Designs with Tissue Physical Characteristics and Embedded Sensors 135
    A. Chandrashekhar, R. Raffik, R. Sridevi, M. Sindhu, Kodela Rajkumar and Tarun Jaiswal

    9.1 Introduction 136

    9.2 Literature Review 137

    9.3 Methodology 139

    9.4 Analysis and Discussion 140

    9.5 Conclusion 149

    References 150

    10 Fast Computing Network Infrastructure for Healthcare Systems Based on 6G Future Perspective 153
    Ranjeet Yadav, S. L. Prathapa Reddy, Akshay Upmanyu, Ravi Kumar Sanapala, V. Malathy and Umakant Bhaskar Gohatre

    10.1 Introduction 154

    10.2 Literature Review 155

    10.3 Research Methodology 157

    10.4 Analysis and Discussion 158

    10.5 Conclusion 167

    References 168

    11 Analysis of Multimodality Fusion of Medical Image Segmentation Employing Deep Learning 171
    G. Santhakumar, Dattatray G. Takale, Swati Tyagi, Raju Anitha, Mohit Tiwari and Joshuva Arockia Dhanraj

    11.1 Introduction 172

    11.1.1 Research Gap 174

    11.1.2 Research Aim 174

    11.2 Literature Review 174

    11.3 Research Methodology 176

    11.4 Results and Discussion 177

    11.5 Conclusion 180

    References 181

    12 New Perspectives, Challenges, and Advances in Data Fusion in Neuroimaging 185
    Pedada Sujata, Dattatray G. Takale, Swati Tyagi, Saniya Bhalerao, Mohit Tiwari and Joshuva Arockia Dhanraj

    12.1 Introduction 186

    12.1.1 Research Gap 188

    12.2 Literature Review 188

    12.3 Research Methodology 190

    12.3.1 Human Brain Temporal and Spatial Data Mining Using FOCA and Data Fusion 190

    12.3.2 Construction of the Multimodal Neuroimaging Data Fusion 190

    12.4 Results and Discussion 191

    12.4.1 EEG–fMRI Shared Multimodal Simulation Evaluation 192

    12.4.2 Implementation of Multimodal Neuroimaging Data Fusion 192

    12.5 Challenges 194

    12.6 Conclusion 195

    References 196

    13 The Potential of Cloud Computing in Medical Big Data Processing Systems 199
    A. Mallareddy, M. Jaiganesh, Sophia Navis Mary, Manikandan K., Umakant Bhaskar Gohatre and Joshuva Arockia Dhanraj

    13.1 Introduction 200

    13.2 Literature Review 202

    13.3 Materials and Method 203

    13.4 Result and Discussion 206

    13.5 Conclusion 210

    References 211

    14 Deep Learning (DL) on Exascale Computing to Speed Up Cancer Investigation 215
    D. Rubidha Devi, S. Ashwini, Samreen Rizvi, P. Venkata Hari Prasad, Mohit Tiwari and Joshuva Arockia Dhanraj

    14.1 Introduction 216

    14.2 Literature Review 217

    14.3 Research Methodology 219

    14.4 Analysis and Discussion 220

    14.5 Conclusion 223

    References 224

    15 Current Breakthroughs and Future Perspectives in Surgery Based on AI-Based Computing Vision 227
    Suneet Gupta, Madhu Kumar Vanteru, Sanjeevkumar Angadi, Manikandan K., Mohit Tiwari and Joshuva Arockia Dhanraj

    15.1 Introduction 228

    15.2 Literature Review 229

    15.3 Research Methodology 231

    15.4 Analysis and Discussion 232

    15.5 Conclusion 235

    References 236

    16 MRI-Based Brain Tumor Detection Using Machine Learning 239
    Vivek Kumar, Pinki Chugh, Bhuprabha Bharti, Anchit Bijalwan, Amrendra Tripathi, Ram Narayan and Kapil Joshi

    16.1 Introduction 240

    16.2 Pre-Processing 242

    16.3 Segmentation 243

    16.4 Feature Extraction 244

    16.5 SVM Classifier 246

    16.6 Methodology 248

    16.7 Conclusion 249

    References 249

    17 Chili Pepper as a Natural Therapeutic Drug: A Review of Its Anticancer and Antioxidant Properties and Mechanism of Action Using the Machine Learning Approach 253
    Rachana Joshi, Narinder Kumar, B. S. Rawat, Reena Dhyani, Hemlata Sharma and Rajiv Kumar

    17.1 Introduction 254

    17.2 Machine Learning Technique 255

    17.3 Composition Profile 255

    17.4 Reactions of Phytochemicals to Drying and Ripening 256

    17.5 Antioxidant Activity 257

    17.6 Anticancer Activity 258

    17.7 Activities that are Anti-Inflammatory and Relieve Pain 260

    17.8 Activities Controlling Diabetes and Hyperglycemia 260

    17.9 The Impacts of Anticholesteremic Activity on Lipid Metabolism 262

    17.10 Anticlotting Effect 262

    17.11 Antimicrobial Activity 263

    17.12 Immune Checkpoint Signaling 263

    17.13 Suppression of Antitumor Immune Response 264

    17.14 Antigen Masking 264

    17.15 Immune-Based Cancer Therapies 264

    17.16 Other Miscellaneous Medicinal Values 265

    17.17 Conclusion 267

    References 268

    18 Exascale Computing: The Next Frontier of High-Performance Computing 279
    Rashmi M., Girija D.K. and Yogeesh N.

    18.1 Introduction 280

    18.1.1 Literature Study 281

    18.2 Exascale Computing 282

    18.2.1 Exascale Computers 283

    18.2.2 Case Study 284

    18.2.3 Measuring Computer Speed 285

    18.2.4 Usage of FLOPS in Supercomputers 286

    18.2.5 Exascale Computing: A Crucial Technology 290

    18.2.6 Requirements of High-Speed Computers 291

    18.2.7 Milestones 292

    18.2.8 Exascale Computing Processing 293

    18.2.9 Advantages of Exascale Computing 294

    18.2.10 Exascale Computing in Various Domains 295

    18.2.11 Exascale Computer: A Supercomputer 297

    18.2.12 Exascale Computing Different from Quantum Computing 298

    18.3 Exascale Computing Challenges 299

    18.4 Future Lookup 301

    18.4.1 Needed Improvements 301

    18.5 Conclusion 302

    References 303

    Index 305

Komentarze (0)