Description

Book Synopsis
Diagnosis can be a deep investigative process, complex by nature. The diagnostic processes have become much more multidisciplinary, demanding the use of an eclectic set of technological methodologies and tools, especially from the Fourth Revolution. Biosensors, Artificial Intelligence, Internet of Things and 3D Printing have become common terms in health research. Cancer in all its forms has become one of the biggest public health issues of the twentieth century. Among all types of cancer, breast cancer is the most dangerous for older and middle-aged women; it is also the most common form of cancer among the female population. Breast cancer is among the five most common cancers worldwide. This disease has been proliferating in developed, underdeveloped and developing countries. Its incidence rate is increasing with the average life expectancy of the population and with the adoption of new forms of consumption. There are some preventive strategies for breast cancer, such as stimulating visual inspection and touching of the breasts. However, they are not efficient enough to impact breast cancer mortality rate because the disease is still being diagnosed late in many cases. Therefore, a deeper understanding of the disease is necessary, including its risk factors and strategies for early identification and efficient treatment. The existence of these tools in public healthcare systems is important because they may contribute to increasing the chances of cure and the treatment options, decreasing mortality rates. Herein this collection book, we present to readers a set of works from the state-of-the-art dealing with cancer diagnosis using biosensors, artificial intelligence and other approaches. We hope this collection could present some of the state of the art of innovative techniques based on the Fourth Industrial Revolution to support early and accurate diagnosis of cancer, especially breast cancer.

Table of Contents
Preface; Acknowledgements; Considerations of Novel Diagnostic and Therapeutic Approaches to Metastatic Triple-Negative Breast Cancer; Morphological Decomposition to Detect and Classify Lesions in Mammograms; Breast Lesions Classification in Frontal Thermographic Images Using Intelligent Systems and Moments of Haralick and Zernike; Lesion Detection in Breast Thermography Using Machine Learning Algorithms without Previous Segmentation; Dialectical Optimization Method as a Feature Selection Tool for Breast Cancer Diagnosis Using Thermographic Images; Method for Classification of Breast Lesions in Thermographic Images Using ELM Classifiers; Index.

Understanding a Cancer Diagnosis

    Product form

    £72.24

    Includes FREE delivery

    RRP £84.99 – you save £12.75 (15%)

    Order before 4pm today for delivery by Mon 29 Jun 2026.

    A Paperback / softback by Wellington dos Pinheiro dos Santos

    1 in stock

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Understanding a Cancer Diagnosis by Wellington dos Pinheiro dos Santos

      Publisher: Nova Science Publishers Inc
      Publication Date: 16/04/2020
      ISBN13: 9781536175202, 978-1536175202
      ISBN10: 153617520X
      Also in:
      Oncology

      Description

      Book Synopsis
      Diagnosis can be a deep investigative process, complex by nature. The diagnostic processes have become much more multidisciplinary, demanding the use of an eclectic set of technological methodologies and tools, especially from the Fourth Revolution. Biosensors, Artificial Intelligence, Internet of Things and 3D Printing have become common terms in health research. Cancer in all its forms has become one of the biggest public health issues of the twentieth century. Among all types of cancer, breast cancer is the most dangerous for older and middle-aged women; it is also the most common form of cancer among the female population. Breast cancer is among the five most common cancers worldwide. This disease has been proliferating in developed, underdeveloped and developing countries. Its incidence rate is increasing with the average life expectancy of the population and with the adoption of new forms of consumption. There are some preventive strategies for breast cancer, such as stimulating visual inspection and touching of the breasts. However, they are not efficient enough to impact breast cancer mortality rate because the disease is still being diagnosed late in many cases. Therefore, a deeper understanding of the disease is necessary, including its risk factors and strategies for early identification and efficient treatment. The existence of these tools in public healthcare systems is important because they may contribute to increasing the chances of cure and the treatment options, decreasing mortality rates. Herein this collection book, we present to readers a set of works from the state-of-the-art dealing with cancer diagnosis using biosensors, artificial intelligence and other approaches. We hope this collection could present some of the state of the art of innovative techniques based on the Fourth Industrial Revolution to support early and accurate diagnosis of cancer, especially breast cancer.

      Table of Contents
      Preface; Acknowledgements; Considerations of Novel Diagnostic and Therapeutic Approaches to Metastatic Triple-Negative Breast Cancer; Morphological Decomposition to Detect and Classify Lesions in Mammograms; Breast Lesions Classification in Frontal Thermographic Images Using Intelligent Systems and Moments of Haralick and Zernike; Lesion Detection in Breast Thermography Using Machine Learning Algorithms without Previous Segmentation; Dialectical Optimization Method as a Feature Selection Tool for Breast Cancer Diagnosis Using Thermographic Images; Method for Classification of Breast Lesions in Thermographic Images Using ELM Classifiers; Index.

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account