Preface
Page: ii-ii (1)
Author: Akhil Sharma, Shaweta Sharma, Shivkanya Fuloria and Sudhir Kumar
DOI: 10.2174/9798898811952125010002
The Evolving Landscape of Skin Cancer Diagnostics
Page: 1-31 (31)
Author: T. Naga Aparna, Sajeeda Niketh, E. Keshamma, Suraj Mandal and Akhil Sharma*
DOI: 10.2174/9798898811952125010004
PDF Price: $30
Abstract
Recent discoveries in skin cancer and technological advances making accurate diagnostics far more practical are rapidly changing how skin cancer is diagnosed. Imaging skin tumors or relevant skin pathology with high-resolution, noninvasive anatomical methods have increased the diagnostic precision for these very difficult-to-diagnose entities. The advent of imaging technologies such as Reflectance Confocal Microscopy (RCM) correlative Optical Coherence Tomography (OCT) now allows a high-resolution visualization of skin lesions, subsequently allowing for increased diagnostic accuracy. Novel molecular diagnostics, including gene expression profiling and mutational analysis, reveal the underlying genetic changes associated with skin cancers and pave the way for personalized therapy. Integrating artificial intelligence (AI) into dermatology may yield numerous advantages, including but not limited to improved clinical accuracy, the ability to detect skin cancers at early stages, recommendations for skin lesion and eruption treatments, and enhanced continuity of care. AI-driven diagnostic tools can diagnose skin diseases faster and more accurately than human dermatologists, which could augment the abilities of dermatologists. Noninvasive methodologies, including molecular imaging, liquid biopsies, and Raman spectroscopy, have recently become promising diagnostic methods for skin cancer biomarkers without tissue samples. Wearable diagnostics and nanotechnology advances provide a valuable opportunity for point-of-care testing and continuous monitoring. Despite these developments, challenges remain regarding their cost, accessibility, and integration into clinical practice. This chapter will elaborate on the ultimate transformative effect of these technological advancements, the remaining challenges, and the future of skin cancer diagnosis, pointing out the importance of continued innovation in improving patient outcomes and facilitating clinical procedures.
Transformation of Skin Cancer Diagnosis with the Utilization of IoT
Page: 32-69 (38)
Author: R. Seetharaman, Sonali D. Pawar, Raghav Dixit, Zeba Siddiqui, Gourishankar Birtia and Shaweta Sharma
DOI: 10.2174/9798898811952125010005
PDF Price: $30
Abstract
Skin cancer is a serious health threat that affects almost 125,000 new people diagnosed with melanoma each year. Among the various types of cancer, skin cancer is one of the most vicious ones. Skin cancer is known for the fact that it often spreads (moves to other parts of the body over time), and thus, it is harder to treat when diagnosed later; therefore, early detection is paramount. Dermatoscopy, clinical assessment, and other visual techniques were some of the primary methods used to identify skin lesions. The study says that the performance of first-time and inexperienced physicians could lead to bias in skin lesion diagnosis. Skin cancer can be life-threatening, but the sooner it is detected, the lesser its chance of killing people. Much research has shown that IoT does better than the best professional in various vision-based tasks. This chapter explores the technologies of IoT, for example, wearable devices, smartwatches, and fitness trackers with UV sensors, skin patches with sensors for monitoring changes, mobile applications for tracking moles and skin changes, smart dermatoscopy, and cloud computing approaches for the diagnosis of skin cancer. The chapter concludes by discussing the role of IoT role in the enhancement of skin cancer diagnosis and also assists in controlling the general health of the skin. Besides the advancement of IoT, challenges such as system integration and patient data privacy have remained critical.
AI-powered Imaging for Early Skin Cancer Detection
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Author: Akhil Sharma, Shaweta Sharma, Akanksha Sharma, Shivkanya Fuloria and Sunita*
DOI: 10.2174/9798898811952125010006
PDF Price: $30
Abstract
Artificial intelligence (AI) has made remarkable advances in recent years that have ushered in a new era of precision medicine, particularly when it comes to the early diagnosis of skin cancer. This chapter explores the potential role of artificial intelligence (AI), which is powered by imaging in dermatology, with a focus on early skin cancer diagnosis. This allows artificial intelligence to analyze complex dermatological photos with statistically greater accuracy, significantly streamlining the diagnostic process. It makes use of the latest algorithms and teaching approaches. AIbased technologies integrated with existing diagnostic methods, such as dermoscopy and molecular diagnostics, offer a comprehensive solution to the identification of skin tumors. This strategy improves the ability to detect neoplasms at their most early and treatable periods. Evidence of AI-driven solutions is applied successfully in clinical practice with case studies provided by Leicester ICS and Lancashire ICB. The examples depicted here demonstrate how AI may broaden diagnostic reach, reduce wait times, and provide more precise evaluations with flow-through benefits for patients. Lastly, the chapter explores several ethical and regulatory topics necessary for implementing artificial intelligence within health care. Special emphasis is placed on its importance in terms of data protection, security, reduction of bias, and patient approval. Future work in this field would include the development of real-time diagnostic and telemedicine applications, further optimization of AI algorithms, and better integration with other diagnostic modalities. Elimination of biases and improving generalizability of AI models across diverse populations remains a major area of ongoing challenge. Research and development of AI-powered imaging is maturing to the point where it could transform early-stage skin cancer detection and treatment. This promises a future where healthcare becomes more precise, efficient, and accessible.
Role of IoT in Remote Dermatology Monitoring
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Author: Sunita, Akhil Sharma, Shaweta Sharma, Neeraj Kumar Fuloria and Ashish Verma*
DOI: 10.2174/9798898811952125010007
PDF Price: $30
Abstract
Skin diseases are among the most prevalent issues in contemporary times that must be examined. The diagnostic process is still based on the opinions and expertise of medical professionals. A wrong diagnosis, diagnostic lag, or an inability to diagnose can have serious or fatal outcomes. The Internet of Things implies connectivity, heterogeneity, and a huge number of devices joining daily as technology advances and puts away insightful gadgets’ floods massively. This has led to a need for context-aware platforms anywhere and everywhere. Nonetheless, this divergence of knowledge needs to be integrated and unified to prepare the ground for achieving the goals above and firmly establishing the IoT paradigm. This chapter highlighted the employment of IoT devices for remote monitoring of skin conditions using wearable devices, smart sensors, and mobile applications. It also highlights IoT Technologies (such as AI and machine learning, cloud computing, big data analytics, and telemedicine platforms) for remote monitoring of dermatology. It concluded by discussing the application of IoT in remote dermatology.
Tele-Dermatology: Enhancing Access to Skin Cancer Experts
Page: 136-167 (32)
Author: Sakshi Aole, Safiya Bee, Taru Shrivastava, Apoorva Chourey, Ayushi Chourasia and Shaweta Sharma*
DOI: 10.2174/9798898811952125010008
PDF Price: $30
Abstract
Dermatological care has been transformed by teledermatology, which has
considerably improved access to skin cancer specialists. This is especially true in
disadvantaged places, where there is a limited availability of specialist care resources.
This chapter examines the development of teledermatology, with a focus on its
techniques and the impact it has had on the treatment of skin cancer. Teledermatology
makes use of both store-and-forward and real-time consultation methods, which
enables the diagnosis and management of skin problems to be carried out remotely.
Dermatologists can properly assess and triage patients through the use of these
approaches. This allows for the early detection of skin cancers such as melanoma, basal
cell carcinoma, and squamous cell carcinoma, which is essential for the survival and
outcomes of patients. Recent developments in digital imaging, mobile health
technologies, and the increasing use of electronic health records (EHRs) have all
contributed to the acceleration of the incorporation of teledermatology into ordinary
clinical practice. Furthermore, the utilization of artificial intelligence (AI) and machine
learning in the field of teledermatology has resulted in an improvement in diagnosis
accuracy. This has enabled assistance in the interpretation of intricate dermatological
situations, hence enhancing the overall efficiency of care delivery.
The field of teledermatology, despite the many advantages it offers, is confronted with
many obstacles. These obstacles include inequities in access to technology, concerns
over the privacy and security of data, and the requirement for defined protocols to
guarantee a uniform level of care. The legal and ethical considerations that are linked
with teledermatology are also discussed in this chapter. Particular attention is paid to
the issue of patient permission and the practice of medicine across jurisdictions. This
chapter takes a look into the future and analyzes potential future directions in the field
of teledermatology. These prospects include the possibility of deeper integration of artificial intelligence, the expansion of teledermatology services to other locations, and
the ongoing development of innovative technology to improve patient care. Through
the resolution of these problems and the utilization of the full potential of
teledermatology, healthcare systems can guarantee wider and more equitable access to
skin cancer expertise, which will ultimately result in improved patient outcomes
internationally.
Digital Dermoscopy: Advancements in Visualizing Skin Lesions
Page: 168-201 (34)
Author: Ashish Verma, Sunita, Akhil Sharma, Shaweta Sharma, Shilpa Thukral and Akanksha Sharma*
DOI: 10.2174/9798898811952125010009
PDF Price: $30
Abstract
Digital dermoscopy is an emerging novel advancement in dermatology that has transformed the assessment and diagnosis of skin lesions. Although effective, traditional skin inspection techniques depend on interpreting dermatologists, so there might be variations in diagnosis. Digital dermoscopy is a high-resolution imaging technology that has transformed how we examine lesions, making it possible to detect melanoma and non-melanoma skin cancers more objectively, accurately, and at an early stage. There have been developments in digital dermoscopy with the integration of artificial intelligence (AI) and machine learning algorithms, which help in analyzing skin lesions by detecting patterns and distinguishing between benign and malignant lesions more accurately. Artificial intelligence-driven systems can minimize human error and improve diagnosis accuracy in essential care settings, where access to the dermatologist could be challenging. These systems are useful in diagnostic support and improve the possibility of training for health care providers. Furthermore, teledermoscopy, a digital dermoscopy subset, has improved access to dermatologic care. When combined with telemedicine platforms, patients can be consulted digitally, and skin lesions can be monitored longitudinally using dermoscopic images. This can be especially beneficial in areas with few dermatologic services, such as rural regions. This is particularly valuable in rural or underserved regions with limited dermatological services. Digital dermoscopy also enables the storage and comparison of images over time, facilitating better monitoring of lesion evolution. This functionality is especially important for patients with a history of skin cancer or high-risk patients, allowing the identification of subtle changes that may suggest malignant potential. In conclusion, digital dermoscopy will be a cornerstone of dermatology in the future because it provides better diagnosis as well as accessibility and outcomes for patients. With continued advancements, it would be able to lower the number of cases of skin cancer deaths and could change the standard for how skin disease is detected early on.
Machine Learning Algorithms for Dermatopathology Analysis
Page: 202-232 (31)
Author: Akanksha Sharma, Ashish Verma, Sunita, Akhil Sharma, Shivkanya Fuloria and Shaweta Sharma*
DOI: 10.2174/9798898811952125010010
PDF Price: $30
Abstract
Dermatopathology is a sub-specialty of dermatology that involves microscopic examination of skin biopsy information for clinical diagnosis. While knowledge of disease and skill in diagnosis have improved with advances in technology and science, the amount of clinical information and the quality of biopsy specimens remains a challenge. Typically, the specimens are biopsied, and the analyses are pathologic, serving a supportive or confirming role in the diagnostic algorithm. Automation and artificial intelligence in dermatopathology provide lower human mistakes, higher efficiency and productivity, improved traceability, uptake of digital pathology, and cost savings. Machine learning algorithms essentially fall into three categories: supervised learning algorithms, unsupervised learning algorithms, and semi-supervised learning algorithms. Regression algorithms discover the connection between target output variables and input features to predict output for new instances. In dermatology, AI can be used to detect skin cancer, especially melanoma. AI models can then accurately learn all the patterns and features that are indicative of malignancy from a large dataset of labelled skin lesion images. However, the implementation of such systems utilising artificial intelligence is wholly dependent on the availability of high-quality and diverse training data. By applying advanced neural architectures to clinical, dermoscopic secretions, or histopathological features, AI models may stratify patients with melanoma into high- and low-risk cohorts and tailor management and surveillance accordingly. Image preprocessing is a crucial step in the dermatopathology pipeline to guarantee high image quality and uniformity. One of the most important strategies in dermatopathology is data augmentation, which expands the data without further image acquisition. We can also include advanced augmentation techniques that can vary skin lesions with rotation, flipping and scaling. Annotation and labelling are needed for crafting a machine learning model, but they are impossible to avoid, as they provide such models with the essential nature of the image. Techniques, as you might have seen, oversampling or undersampling the dataset, are pretty useful because we want our model to have enough exposure to less frequent cases present in a balanced dataset to ensure the models that we build are robust ones. Statistical approaches involving cross-validation and hyperparameter tuning can be used to estimate the skill of machine learning models. There are many evaluation metrics based on which your machine learning models are trained, such as accuracy, precision, recall, F1 score, ROC-AUC, etc., which are all short to better understand your ML models.
Enhancing Skin Cancer Detection with Transfer Learning and Deep Learning
Page: 233-272 (40)
Author: Shaweta Sharma, Akanksha Sharma, Ashish Verma, Neeraj Kumar Fuloria and Akhil Sharma*
DOI: 10.2174/9798898811952125010011
PDF Price: $30
Abstract
Skin cancers have become one of the most common malignancies globally and a healthcare burden that creates a diagnosis difficulty due to their wide nature. Early and accurate detection is crucial for patient outcomes, yet conventional methods largely depend on subjective clinical judgment. The recent progress of artificial intelligence (AI), especially deep learning (DL) and transfer learning (TL), gives potential tools for improving the ability to detect skin cancer. DL Algorithms such as CNN and TL for a better diagnosis by using pre-trained models are discussed in this chapter, tackling several prominent issues like small annotated datasets and heterogeneity in dermoscopic images. TL addresses common bottlenecks in medical image analysis, such as limited availability of annotated datasets and high required annotation cost, by permitting a model to be trained using smaller-size domain-specific datasets, therefore offering a much more profitable approach. We outline the standing of AI-assisted systems in clinical workflows, examine the performance of the DL model in dermatological skin cancer detection, and discuss the possibility of this technology in enhancing human dermatological competence. This chapter highlights future research directions such as hybrid models, multimodal data integration, and AI's ethical arrangement in healthcare. Our work focuses on utilizing DL and TL to improve the early detection of skin cancer, which will help to lay the groundwork for more personalized and effective treatment options.
Wearable Devices for Personalized UV Exposure Monitoring
Page: 273-305 (33)
Author: Akhil Sharma, Shaweta Sharma, Akanksha Sharma, Shilpa Thukral and Sunita*
DOI: 10.2174/9798898811952125010012
PDF Price: $30
Abstract
Neglecting proper measures of sun protection, it is understandable why the rates of skin cancer and premature aging of the skin are rising at a rapid rate. Wearable UV monitoring devices, therefore, play a vital role in providing individual, real-time quantification of ultraviolet (UV) exposure. This chapter discusses the properties of UV radiation as they relate to skin health, including different types of UV radiation (UVA, UVB, and UVC) and how they affect the skin. It highlights how accessorizing personalized UV exposure tracking can reduce both short-term damage and long-term health impact. It also summarizes diverse types of wearable UV monitoring devices, including those in the form of wristbands (UV-tracking), patches (UV-detecting), smart clothing, and smartwatches, which use unique sensors and technologies to sense and respond to UV exposure. The chapter ends by discussing the benefits of these approaches, specifically their function in increasing awareness of UV exposure and healthier skin behaviors, as well as a progression toward personalized dermatological care. The combination of immediate and long-term skin health objectives with wearable UV monitors is a meaningful advancement in clinical medicine.
Subject Index
Page: 306-308 (3)
Author: Akhil Sharma, Shaweta Sharma, Shivkanya Fuloria and Sudhir Kumar
DOI: 10.2174/9798898811952125010013
Introduction
This two-part series examines how AI-powered image analysis and IoT-enabled devices enhance diagnostic precision, facilitate real-time monitoring and early detection through connected sensors. Together, these technologies bridge gaps in access, reduce diagnostic subjectivity, and support remote patient care. The books also address vital considerations such as data privacy, security, and ethical implications in digital healthcare. Highlighting both current applications and future directions, the series emphasizes interdisciplinary collaboration to advance AI and IoT-driven dermatology for improved clinical outcomes and equitable healthcare delivery. Key Features: Explores the convergence of AI and IoT in skin cancer detection and care. Highlights advanced imaging, data analytics, and sensor-based monitoring. Discusses challenges related to privacy, ethics, and healthcare accessibility. Showcases current research and innovations targeting early and precise diagnosis. Bridges medical, technological, and policy perspectives for holistic insight.

