Author: Samuel Schäfer
Publisher: Linköping University Electronic Press
ISBN: 9180757081
Category :
Languages : en
Pages : 207
Book Description
Modern healthcare faces a significant challenge, namely that 25-70% of patients with common diseases do not benefit from standard treatments despite the availability of over 13,000 drugs registered in DrugBank. This discrepancy is likely due to these diseases' complex and heterogeneous molecular nature rather than a lack of therapeutic options. Emerging technologies have revealed the immense molecular complexity underlying common diseases. For instance, singlecell RNA sequencing (scRNA-seq) has demonstrated altered gene interactions in and across multiple cell types in numerous tissues. Furthermore, these technologies have revealed vast molecular differences between patients with the same diagnosis. There is a wide gap between this complexity and the current diagnostic and therapeutic approaches. Aim: To bring personalized medicine one step closer to the clinic; this thesis focuses on developing digital disease models that can capture the molecular biological complexity of disease in individual patients. We aim to harness these disease models to identify optimal treatments for each individual patient. Paper I: We started by exploring the usefulness of OMIC-based approaches for diagnostic and therapeutic predictions. Utilizing a single-cell RNA-sequenced mouse model of antigen-induced arthritis, we aimed to prioritize cell types and therapeutic targets. Initial pathway enrichment analyses did not yield relevant prioritization, prompting an investigation into network-based approaches. Multi-cellular disease models (MCDMs) for AIA and human rheumatoid arthritis were constructed, incorporating predicted cell type interactions. Centrality analysis indicated that these interactions could quantify a cell type’s relative importance in disease pathogenesis. We hypothesized that transcriptomic alterations in central cell types might reflect the MCDM, serving as potential diagnostic markers. An analysis of CD4+ T cells from patients with 13 different inflammatory diseases and healthy controls demonstrated that these profiles could discriminate between healthy and diseased states and among diseases. Furthermore, a network-based approach identified drugs targeting disease- associated changes common to multiple inflammatory diseases. Notably, one of these drugs, bezafibrate, successfully dampened inflammation in the AIA mouse model. Paper II: Building on the insights from Paper I, we investigated multicellular network models (MNMs) with time as an additional dimension. Using seasonal allergic rhinitis (SAR) as a disease model, we analyzed time-series scRNAseq data to construct MNMs of inflammatory diseases. We identified thousands of disease-associated expression changes across multiple cell types, varying at different disease stages. Notably, upstream regulators (URs) of these changes were also stage-dependent and multidirectional. To prioritize URs for drug discovery, we focused on those causing significant expression changes in multiple cell types across all time points. This strategy was validated through similar analyses of atopic dermatitis, ulcerative colitis, and Crohn’s disease, confirming that ranked URs aligned with the efficacy of existing drugs targeting the URs in the respective diseases. Furthermore, experimental validation included targeting the top-ranked regulatory gene in SAR, which was more effective than previously discovered IL4 inhibition. Paper III: While Paper I established the use of transcriptomic data for therapeutic predictions, it focused on overlapping disease-related changes across multiple inflammatory diseases and considered transcriptomic changes in only one cell type. Paper II indicated a potential benefit in UR prioritization in numerous cell types. However, it yielded heterogeneous results and was limited by the fact that few drugs directly target URs. Neither of these approaches was feasible for individualized drug predictions. Drawing on previous insights by us and others, we next aimed to develop digital disease models for individual patients, termed digital twins, with the capability for drug efficacy screening. We proposed scDrugPrio, a strategy utilizing single-cell scRNA-sequencing-based multicellular disease models incorporating key biological and pharmacological properties, such as varying gene expression levels, varying gene interactions within and between cell types, and drug effect. scDrugPrio was constructed based on a mouse model of arthritis and validated by improved precision/recall for known drugs and in vitro studies of predicted drugs that were FDA approved for other diseases and had not yet been tried in rheumatoid arthritis or mouse arthritis. For validation, scDrugPrio was applied to human multiple sclerosis as well as Crohn’s disease data that included tissue samples from healthy and sick tissue of all patients; scDrugPrio was able to identify relevant treatments for individual patients and could distinguish anti-TNF responders from non-responders. Conclusion: This thesis demonstrates a framework for constructing digital disease models for personalized therapeutic predictions that might hold potential for better clinical treatment decisions. By leveraging advanced genome-wide analyses and network-based approaches, we may enhance the precision and efficacy of treatments for immune-mediated inflammatory diseases, bringing personalized medicine closer to clinical reality.
Construction and utilization of digital twins for personalized therapeutic predictions
Author: Samuel Schäfer
Publisher: Linköping University Electronic Press
ISBN: 9180757081
Category :
Languages : en
Pages : 207
Book Description
Modern healthcare faces a significant challenge, namely that 25-70% of patients with common diseases do not benefit from standard treatments despite the availability of over 13,000 drugs registered in DrugBank. This discrepancy is likely due to these diseases' complex and heterogeneous molecular nature rather than a lack of therapeutic options. Emerging technologies have revealed the immense molecular complexity underlying common diseases. For instance, singlecell RNA sequencing (scRNA-seq) has demonstrated altered gene interactions in and across multiple cell types in numerous tissues. Furthermore, these technologies have revealed vast molecular differences between patients with the same diagnosis. There is a wide gap between this complexity and the current diagnostic and therapeutic approaches. Aim: To bring personalized medicine one step closer to the clinic; this thesis focuses on developing digital disease models that can capture the molecular biological complexity of disease in individual patients. We aim to harness these disease models to identify optimal treatments for each individual patient. Paper I: We started by exploring the usefulness of OMIC-based approaches for diagnostic and therapeutic predictions. Utilizing a single-cell RNA-sequenced mouse model of antigen-induced arthritis, we aimed to prioritize cell types and therapeutic targets. Initial pathway enrichment analyses did not yield relevant prioritization, prompting an investigation into network-based approaches. Multi-cellular disease models (MCDMs) for AIA and human rheumatoid arthritis were constructed, incorporating predicted cell type interactions. Centrality analysis indicated that these interactions could quantify a cell type’s relative importance in disease pathogenesis. We hypothesized that transcriptomic alterations in central cell types might reflect the MCDM, serving as potential diagnostic markers. An analysis of CD4+ T cells from patients with 13 different inflammatory diseases and healthy controls demonstrated that these profiles could discriminate between healthy and diseased states and among diseases. Furthermore, a network-based approach identified drugs targeting disease- associated changes common to multiple inflammatory diseases. Notably, one of these drugs, bezafibrate, successfully dampened inflammation in the AIA mouse model. Paper II: Building on the insights from Paper I, we investigated multicellular network models (MNMs) with time as an additional dimension. Using seasonal allergic rhinitis (SAR) as a disease model, we analyzed time-series scRNAseq data to construct MNMs of inflammatory diseases. We identified thousands of disease-associated expression changes across multiple cell types, varying at different disease stages. Notably, upstream regulators (URs) of these changes were also stage-dependent and multidirectional. To prioritize URs for drug discovery, we focused on those causing significant expression changes in multiple cell types across all time points. This strategy was validated through similar analyses of atopic dermatitis, ulcerative colitis, and Crohn’s disease, confirming that ranked URs aligned with the efficacy of existing drugs targeting the URs in the respective diseases. Furthermore, experimental validation included targeting the top-ranked regulatory gene in SAR, which was more effective than previously discovered IL4 inhibition. Paper III: While Paper I established the use of transcriptomic data for therapeutic predictions, it focused on overlapping disease-related changes across multiple inflammatory diseases and considered transcriptomic changes in only one cell type. Paper II indicated a potential benefit in UR prioritization in numerous cell types. However, it yielded heterogeneous results and was limited by the fact that few drugs directly target URs. Neither of these approaches was feasible for individualized drug predictions. Drawing on previous insights by us and others, we next aimed to develop digital disease models for individual patients, termed digital twins, with the capability for drug efficacy screening. We proposed scDrugPrio, a strategy utilizing single-cell scRNA-sequencing-based multicellular disease models incorporating key biological and pharmacological properties, such as varying gene expression levels, varying gene interactions within and between cell types, and drug effect. scDrugPrio was constructed based on a mouse model of arthritis and validated by improved precision/recall for known drugs and in vitro studies of predicted drugs that were FDA approved for other diseases and had not yet been tried in rheumatoid arthritis or mouse arthritis. For validation, scDrugPrio was applied to human multiple sclerosis as well as Crohn’s disease data that included tissue samples from healthy and sick tissue of all patients; scDrugPrio was able to identify relevant treatments for individual patients and could distinguish anti-TNF responders from non-responders. Conclusion: This thesis demonstrates a framework for constructing digital disease models for personalized therapeutic predictions that might hold potential for better clinical treatment decisions. By leveraging advanced genome-wide analyses and network-based approaches, we may enhance the precision and efficacy of treatments for immune-mediated inflammatory diseases, bringing personalized medicine closer to clinical reality.
Publisher: Linköping University Electronic Press
ISBN: 9180757081
Category :
Languages : en
Pages : 207
Book Description
Modern healthcare faces a significant challenge, namely that 25-70% of patients with common diseases do not benefit from standard treatments despite the availability of over 13,000 drugs registered in DrugBank. This discrepancy is likely due to these diseases' complex and heterogeneous molecular nature rather than a lack of therapeutic options. Emerging technologies have revealed the immense molecular complexity underlying common diseases. For instance, singlecell RNA sequencing (scRNA-seq) has demonstrated altered gene interactions in and across multiple cell types in numerous tissues. Furthermore, these technologies have revealed vast molecular differences between patients with the same diagnosis. There is a wide gap between this complexity and the current diagnostic and therapeutic approaches. Aim: To bring personalized medicine one step closer to the clinic; this thesis focuses on developing digital disease models that can capture the molecular biological complexity of disease in individual patients. We aim to harness these disease models to identify optimal treatments for each individual patient. Paper I: We started by exploring the usefulness of OMIC-based approaches for diagnostic and therapeutic predictions. Utilizing a single-cell RNA-sequenced mouse model of antigen-induced arthritis, we aimed to prioritize cell types and therapeutic targets. Initial pathway enrichment analyses did not yield relevant prioritization, prompting an investigation into network-based approaches. Multi-cellular disease models (MCDMs) for AIA and human rheumatoid arthritis were constructed, incorporating predicted cell type interactions. Centrality analysis indicated that these interactions could quantify a cell type’s relative importance in disease pathogenesis. We hypothesized that transcriptomic alterations in central cell types might reflect the MCDM, serving as potential diagnostic markers. An analysis of CD4+ T cells from patients with 13 different inflammatory diseases and healthy controls demonstrated that these profiles could discriminate between healthy and diseased states and among diseases. Furthermore, a network-based approach identified drugs targeting disease- associated changes common to multiple inflammatory diseases. Notably, one of these drugs, bezafibrate, successfully dampened inflammation in the AIA mouse model. Paper II: Building on the insights from Paper I, we investigated multicellular network models (MNMs) with time as an additional dimension. Using seasonal allergic rhinitis (SAR) as a disease model, we analyzed time-series scRNAseq data to construct MNMs of inflammatory diseases. We identified thousands of disease-associated expression changes across multiple cell types, varying at different disease stages. Notably, upstream regulators (URs) of these changes were also stage-dependent and multidirectional. To prioritize URs for drug discovery, we focused on those causing significant expression changes in multiple cell types across all time points. This strategy was validated through similar analyses of atopic dermatitis, ulcerative colitis, and Crohn’s disease, confirming that ranked URs aligned with the efficacy of existing drugs targeting the URs in the respective diseases. Furthermore, experimental validation included targeting the top-ranked regulatory gene in SAR, which was more effective than previously discovered IL4 inhibition. Paper III: While Paper I established the use of transcriptomic data for therapeutic predictions, it focused on overlapping disease-related changes across multiple inflammatory diseases and considered transcriptomic changes in only one cell type. Paper II indicated a potential benefit in UR prioritization in numerous cell types. However, it yielded heterogeneous results and was limited by the fact that few drugs directly target URs. Neither of these approaches was feasible for individualized drug predictions. Drawing on previous insights by us and others, we next aimed to develop digital disease models for individual patients, termed digital twins, with the capability for drug efficacy screening. We proposed scDrugPrio, a strategy utilizing single-cell scRNA-sequencing-based multicellular disease models incorporating key biological and pharmacological properties, such as varying gene expression levels, varying gene interactions within and between cell types, and drug effect. scDrugPrio was constructed based on a mouse model of arthritis and validated by improved precision/recall for known drugs and in vitro studies of predicted drugs that were FDA approved for other diseases and had not yet been tried in rheumatoid arthritis or mouse arthritis. For validation, scDrugPrio was applied to human multiple sclerosis as well as Crohn’s disease data that included tissue samples from healthy and sick tissue of all patients; scDrugPrio was able to identify relevant treatments for individual patients and could distinguish anti-TNF responders from non-responders. Conclusion: This thesis demonstrates a framework for constructing digital disease models for personalized therapeutic predictions that might hold potential for better clinical treatment decisions. By leveraging advanced genome-wide analyses and network-based approaches, we may enhance the precision and efficacy of treatments for immune-mediated inflammatory diseases, bringing personalized medicine closer to clinical reality.
Construction and Utilization of Digital Twins for Personalized Therapeutic Predictions
Author: Samuel Schäfer
Publisher:
ISBN: 9789180757072
Category :
Languages : en
Pages : 0
Book Description
Publisher:
ISBN: 9789180757072
Category :
Languages : en
Pages : 0
Book Description
Digital Transformation in Healthcare 5.0
Author: Rishabha Malviya
Publisher: Walter de Gruyter GmbH & Co KG
ISBN: 3111399117
Category : Computers
Languages : en
Pages : 480
Book Description
The book "Digital Transformation in Healthcare 5.0: Metaverse, Nanorobots, and Machine Learning" is a comprehensive discussion of disruptive technologies and their applications in healthcare. The book starts with an overview of blockchain technology's impact on the healthcare sector, emphasizing its potential to improve data security and interoperability. The book also discusses the Metaverse's role in healthcare transformation, utilizing a blockchain method to improve patient care and medical practices. The book also focuses on the interrelationships of Blockchain-Enabled Metaverse Healthcare Systems and Applications, highlighting innovative strategies. It also introduces an Intraocular Pressure Monitoring System for Glaucoma Patients, demonstrating the integration of IoT and Machine Learning for improved care. The book winds up with a Machine Learning Approach to Voice Analysis in Parkinson's disease Diagnosis, demonstrating the potential of voice analysis as a non-invasive diagnostic tool.
Publisher: Walter de Gruyter GmbH & Co KG
ISBN: 3111399117
Category : Computers
Languages : en
Pages : 480
Book Description
The book "Digital Transformation in Healthcare 5.0: Metaverse, Nanorobots, and Machine Learning" is a comprehensive discussion of disruptive technologies and their applications in healthcare. The book starts with an overview of blockchain technology's impact on the healthcare sector, emphasizing its potential to improve data security and interoperability. The book also discusses the Metaverse's role in healthcare transformation, utilizing a blockchain method to improve patient care and medical practices. The book also focuses on the interrelationships of Blockchain-Enabled Metaverse Healthcare Systems and Applications, highlighting innovative strategies. It also introduces an Intraocular Pressure Monitoring System for Glaucoma Patients, demonstrating the integration of IoT and Machine Learning for improved care. The book winds up with a Machine Learning Approach to Voice Analysis in Parkinson's disease Diagnosis, demonstrating the potential of voice analysis as a non-invasive diagnostic tool.
Deep Sciences for Computing and Communications
Author: Annie Uthra R.
Publisher: Springer Nature
ISBN: 3031689054
Category :
Languages : en
Pages : 530
Book Description
Zusammenfassung: This two-volume set, CCIS 2176-2177, constitutes the proceedings from the Second International Conference on Deep Sciences for Computing and Communications, IconDeepCom 2023, held in Chennai, India, in April 2023. The 74 full papers and 8 short papers presented here were thoroughly reviewed and selected from 252 submissions. The papers presented in these two volumes are organized in the following topical sections: Part I: Applications of Block chain for Digital Landscape; Deep Learning approaches for Multipotent Application; Machine Learning Techniques for Intelligent Applications; Industrial use cases of IOT; NLP for Linguistic Support; Convolution Neural Network for Vision Applications. Part II: Optimized Wireless Sensor Network Protocols; Cryptography Applications for Enhanced Security; Implications of Networking on Society; Deep Learning Model for Health informatics; Web Application for Connected Communities; Intelligent Insights using Image Processing; Precision Flood Prediction Models.
Publisher: Springer Nature
ISBN: 3031689054
Category :
Languages : en
Pages : 530
Book Description
Zusammenfassung: This two-volume set, CCIS 2176-2177, constitutes the proceedings from the Second International Conference on Deep Sciences for Computing and Communications, IconDeepCom 2023, held in Chennai, India, in April 2023. The 74 full papers and 8 short papers presented here were thoroughly reviewed and selected from 252 submissions. The papers presented in these two volumes are organized in the following topical sections: Part I: Applications of Block chain for Digital Landscape; Deep Learning approaches for Multipotent Application; Machine Learning Techniques for Intelligent Applications; Industrial use cases of IOT; NLP for Linguistic Support; Convolution Neural Network for Vision Applications. Part II: Optimized Wireless Sensor Network Protocols; Cryptography Applications for Enhanced Security; Implications of Networking on Society; Deep Learning Model for Health informatics; Web Application for Connected Communities; Intelligent Insights using Image Processing; Precision Flood Prediction Models.
Exploring the Advancements and Future Directions of Digital Twins in Healthcare 6.0
Author: Dubey, Archi
Publisher: IGI Global
ISBN:
Category : Computers
Languages : en
Pages : 468
Book Description
The healthcare industry is increasingly complex, demanding personalized treatments and efficient operational processes. Traditional research methods need help to keep pace with these demands, often leading to inefficiencies and suboptimal outcomes. Integrating digital twin technology presents a promising solution to these challenges, offering a virtual platform for modeling and simulating complex healthcare scenarios. However, the full potential of digital twins still needs to be explored mainly due to a lack of comprehensive guidance and practical insights for researchers and practitioners. Exploring the Advancements and Future Directions of Digital Twins in Healthcare 6.0 is not just a theoretical exploration. It is a practical guide that bridges the gap between theory and practice, offering real-world case studies, best practices, and insights into personalized medicine, real-time patient monitoring, and healthcare process optimization. By equipping you with the knowledge and tools needed to effectively integrate digital twins into your healthcare research and operations, this book is a valuable resource for researchers, academicians, medical practitioners, scientists, and students.
Publisher: IGI Global
ISBN:
Category : Computers
Languages : en
Pages : 468
Book Description
The healthcare industry is increasingly complex, demanding personalized treatments and efficient operational processes. Traditional research methods need help to keep pace with these demands, often leading to inefficiencies and suboptimal outcomes. Integrating digital twin technology presents a promising solution to these challenges, offering a virtual platform for modeling and simulating complex healthcare scenarios. However, the full potential of digital twins still needs to be explored mainly due to a lack of comprehensive guidance and practical insights for researchers and practitioners. Exploring the Advancements and Future Directions of Digital Twins in Healthcare 6.0 is not just a theoretical exploration. It is a practical guide that bridges the gap between theory and practice, offering real-world case studies, best practices, and insights into personalized medicine, real-time patient monitoring, and healthcare process optimization. By equipping you with the knowledge and tools needed to effectively integrate digital twins into your healthcare research and operations, this book is a valuable resource for researchers, academicians, medical practitioners, scientists, and students.
Handbook of Industrial and Business Applications with Digital Twins
Author: Saravanan Krishnan
Publisher: CRC Press
ISBN: 1040266754
Category : Computers
Languages : en
Pages : 409
Book Description
A digital twin represents the indistinguishable digital counterpart of the physical object to simulate, monitor and test with real time synchronization. This book presents the framework and important key aspects of digital twins, including various technologies with coverage of the digital twins in various industry and business applications. It provides a background of modeling and simulation, computer sensor technology and other areas required creating the next wave of digital twins. Features: Presents exclusive material on industrial and business applications of digital twins Includes diversified digital twin applications with use cases Focuses on tools and methods for digital twins, platforms, application domains and industries Emphasizes advances and cutting-edge technologies throughout Reviews artificial intelligence (AI), fog/edge computing, industrial automation, blockchains and the Internet of Things (IoT) This book is aimed at researchers and graduate students in cloud computing, simulation, the IoT and computer engineering.
Publisher: CRC Press
ISBN: 1040266754
Category : Computers
Languages : en
Pages : 409
Book Description
A digital twin represents the indistinguishable digital counterpart of the physical object to simulate, monitor and test with real time synchronization. This book presents the framework and important key aspects of digital twins, including various technologies with coverage of the digital twins in various industry and business applications. It provides a background of modeling and simulation, computer sensor technology and other areas required creating the next wave of digital twins. Features: Presents exclusive material on industrial and business applications of digital twins Includes diversified digital twin applications with use cases Focuses on tools and methods for digital twins, platforms, application domains and industries Emphasizes advances and cutting-edge technologies throughout Reviews artificial intelligence (AI), fog/edge computing, industrial automation, blockchains and the Internet of Things (IoT) This book is aimed at researchers and graduate students in cloud computing, simulation, the IoT and computer engineering.
Harnessing AI and Digital Twin Technologies in Businesses
Author: Ponnusamy, Sivaram
Publisher: IGI Global
ISBN:
Category : Computers
Languages : en
Pages : 542
Book Description
The intersection of artificial intelligence (AI) and digital twin technology presents a problem and an unparalleled opportunity for transformation. Businesses grapple with the need for operational excellence, innovation, and a competitive edge, all while navigating the intricate web of data analytics, decision-making, and real-time monitoring. In response to these challenges, Harnessing AI and Digital Twin Technologies in Businesses emerges as an example of insight and guidance, offering a comprehensive exploration of the complementary connection between AI and digital twin technology. In a world where the convergence of these powerful tools transforms business intelligence, enabling initiative-taking decision-making and dynamic simulations. This book serves as a solution for decision-makers, technologists, and researchers seeking to not only understand but harness the potential of AI-powered digital twins to enhance productivity, creativity, and judgment in their operations.
Publisher: IGI Global
ISBN:
Category : Computers
Languages : en
Pages : 542
Book Description
The intersection of artificial intelligence (AI) and digital twin technology presents a problem and an unparalleled opportunity for transformation. Businesses grapple with the need for operational excellence, innovation, and a competitive edge, all while navigating the intricate web of data analytics, decision-making, and real-time monitoring. In response to these challenges, Harnessing AI and Digital Twin Technologies in Businesses emerges as an example of insight and guidance, offering a comprehensive exploration of the complementary connection between AI and digital twin technology. In a world where the convergence of these powerful tools transforms business intelligence, enabling initiative-taking decision-making and dynamic simulations. This book serves as a solution for decision-makers, technologists, and researchers seeking to not only understand but harness the potential of AI-powered digital twins to enhance productivity, creativity, and judgment in their operations.
Innovative Treatment Strategies for Clinical Electrophysiology
Author: Tomasz Jadczyk
Publisher: Springer Nature
ISBN: 9811966494
Category : Science
Languages : en
Pages : 136
Book Description
This book highlights the advancements in different fields of clinical electrophysiology and gives the reader a good background of the established practices. To tackle such a wide topic, the book focuses on two main aspects: ablation and pacing, discussing the novel energy sources and approaches to rhythm restoration and control; devices and signal processing, highlighting the new available technologies and numerical approaches aiding practice and home medicine. It also presents the reader with selected strategies that could be a paradigm shifts for the field: in situ cell reprogramming, exploiting the newly founded achievements in epigenetic modification of somatic cells; artificial intelligence; cardiac digital twinning, which aims to collect the information from imaging, mechanics and electrophysiology and condense it into a patient-specific model for personalized treatment.
Publisher: Springer Nature
ISBN: 9811966494
Category : Science
Languages : en
Pages : 136
Book Description
This book highlights the advancements in different fields of clinical electrophysiology and gives the reader a good background of the established practices. To tackle such a wide topic, the book focuses on two main aspects: ablation and pacing, discussing the novel energy sources and approaches to rhythm restoration and control; devices and signal processing, highlighting the new available technologies and numerical approaches aiding practice and home medicine. It also presents the reader with selected strategies that could be a paradigm shifts for the field: in situ cell reprogramming, exploiting the newly founded achievements in epigenetic modification of somatic cells; artificial intelligence; cardiac digital twinning, which aims to collect the information from imaging, mechanics and electrophysiology and condense it into a patient-specific model for personalized treatment.
Emerging Computer Technologies 2
Author: Ömer Aydın
Publisher: İzmir Akademi Derneği
ISBN: 605722132X
Category : Computers
Languages : en
Pages : 46
Book Description
There is rapid development and change in the field of computer science today. These affect all areas of life. Emerging topics in computer science are covered in this book. In the first chapter, a specific IoT application called a smart mailbox with face recognition, which uses cellular connectivity and image processing to securely deliver valuable documents. The prototype for this system includes a fingerprint reader, camera, electromagnetic lock, and various other components connected to an Arduino Uno and a Raspberry Pi, and uses OpenCV and Python software for face detection and recognition. In the second chapter, authors compares and evaluates the main characteristics of 5G channels and the performance of two channel coding candidates, low-density parity-check (LDPC) codes and polar codes. The analysis considers block error rate, bit error rate, computational complexity, and flexibility, and finds that polar codes outperform LDPC code systems, though LDPC is still a viable option compared to other code systems. The third chapter focuses on how to reliably process and store DNA sequences in EHR systems without any modifications. To achieve this, the authors introduce a coding technique and evaluate its effectiveness using the Hamming code and Reed-Solomon coding schemes on a sample data set. The results show that the Reed-Solomon coding scheme outperforms the Hamming code in terms of error detection and correction for securely processing DNA records to EHR systems. The next chapter investigates the robustness of AI models trained on thyroid ultrasound images using different convolutional neural network (CNN) architectures (VGG19, Xception, ResNet50V2, and EfficientNetB2) against adversarial attacks using the fast gradient sign method (FGSM), basic iterative method (BIM), and projected gradient descent (PGD) techniques. In the fifth chapter, it was questioned whether artificial intelligence could write an academic article. In this direction, an academic article was created and evaluated by OpenAI ChatGPT. The final chapter proposes an application to measure RF signal intensities in urban areas and use that information to estimate the amount of energy that can be harvested from these signals. This information is then presented to users through a geographical information system.
Publisher: İzmir Akademi Derneği
ISBN: 605722132X
Category : Computers
Languages : en
Pages : 46
Book Description
There is rapid development and change in the field of computer science today. These affect all areas of life. Emerging topics in computer science are covered in this book. In the first chapter, a specific IoT application called a smart mailbox with face recognition, which uses cellular connectivity and image processing to securely deliver valuable documents. The prototype for this system includes a fingerprint reader, camera, electromagnetic lock, and various other components connected to an Arduino Uno and a Raspberry Pi, and uses OpenCV and Python software for face detection and recognition. In the second chapter, authors compares and evaluates the main characteristics of 5G channels and the performance of two channel coding candidates, low-density parity-check (LDPC) codes and polar codes. The analysis considers block error rate, bit error rate, computational complexity, and flexibility, and finds that polar codes outperform LDPC code systems, though LDPC is still a viable option compared to other code systems. The third chapter focuses on how to reliably process and store DNA sequences in EHR systems without any modifications. To achieve this, the authors introduce a coding technique and evaluate its effectiveness using the Hamming code and Reed-Solomon coding schemes on a sample data set. The results show that the Reed-Solomon coding scheme outperforms the Hamming code in terms of error detection and correction for securely processing DNA records to EHR systems. The next chapter investigates the robustness of AI models trained on thyroid ultrasound images using different convolutional neural network (CNN) architectures (VGG19, Xception, ResNet50V2, and EfficientNetB2) against adversarial attacks using the fast gradient sign method (FGSM), basic iterative method (BIM), and projected gradient descent (PGD) techniques. In the fifth chapter, it was questioned whether artificial intelligence could write an academic article. In this direction, an academic article was created and evaluated by OpenAI ChatGPT. The final chapter proposes an application to measure RF signal intensities in urban areas and use that information to estimate the amount of energy that can be harvested from these signals. This information is then presented to users through a geographical information system.
Society 5.0 and Next Generation Healthcare
Author: Zodwa Dlamini
Publisher: Springer Nature
ISBN: 3031364619
Category : Medical
Languages : en
Pages : 298
Book Description
This book analyses the ability of technological advancements to represent, enhance, and empower multidisciplinarity in the context of Society 5.0. and next generation medicine. New technologies allow patients to communicate with medical personnel anytime, anywhere and shape the terrain of healthcare ecosystem at an unprecedented rate. Five main trends become apparent in this process: Hybrid care models combining virtual and in-person services, digitization of healthcare specialties, increased Artificial intelligence (AI) adoption, health systems moving to the cloud and advanced precision medicine. In its chapters the book dissects the important roles for technologies in areas such as digital twinning, big data, Internet of Things, AI, cyber-physical systems, blockchain technology to lead the healthcare digitalization envisioned in Society 5.0. Throughout the book the authors discuss how to incorporate these new technologies legally, ethically, safely, and securely and in keeping with the highest standards of human rights. It also advocates for the need for careful oversight and mindful allocation of resources and energy for sustainable development. This book, written by experts in the field from academia and industry, will appeal to researchers, healthcare professionals, policy makers, teachers and students interested in the ways healthcare is reorganized based on digital transformation efforts and the rethinking of care, including technologies.
Publisher: Springer Nature
ISBN: 3031364619
Category : Medical
Languages : en
Pages : 298
Book Description
This book analyses the ability of technological advancements to represent, enhance, and empower multidisciplinarity in the context of Society 5.0. and next generation medicine. New technologies allow patients to communicate with medical personnel anytime, anywhere and shape the terrain of healthcare ecosystem at an unprecedented rate. Five main trends become apparent in this process: Hybrid care models combining virtual and in-person services, digitization of healthcare specialties, increased Artificial intelligence (AI) adoption, health systems moving to the cloud and advanced precision medicine. In its chapters the book dissects the important roles for technologies in areas such as digital twinning, big data, Internet of Things, AI, cyber-physical systems, blockchain technology to lead the healthcare digitalization envisioned in Society 5.0. Throughout the book the authors discuss how to incorporate these new technologies legally, ethically, safely, and securely and in keeping with the highest standards of human rights. It also advocates for the need for careful oversight and mindful allocation of resources and energy for sustainable development. This book, written by experts in the field from academia and industry, will appeal to researchers, healthcare professionals, policy makers, teachers and students interested in the ways healthcare is reorganized based on digital transformation efforts and the rethinking of care, including technologies.