Abstract
A good prognosis of cancer therapies mainly depends on how early the condition is being diagnosed and hence the initiation of appropriate treatment measures. In view of availability and affordability of a wide array of diagnostic approaches and methods, an attempt is made to provide a brief insight into each technique that leads to a noninvasive mode of determining the cancerous condition at an early stage. Many of these modern methods utilize radioisotopes to determine the extent of the condition in three-dimensional anatomical manners unlike the invasive histological examination of biopsies. A sound knowledge of these modern methods and understanding the importance of early diagnosis and treatment response are much needed for the better prognosis and well-being of the condition. This paper presents the detailed review of types of cancer, its diagnosis, treatments and also the recent methods of diagnosis using deep learning techniques.
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Prabha, K.V.R., Vaishali, D., Suhasini, P.S., Subhashini, K., Ramesh, P. (2021). Different Diagnostic Aids and the Improved Scope of Establishing Early Breast Cancer Diagnosis. In: Sharma, D.K., Son, L.H., Sharma, R., Cengiz, K. (eds) Micro-Electronics and Telecommunication Engineering. Lecture Notes in Networks and Systems, vol 179. Springer, Singapore. https://doi.org/10.1007/978-981-33-4687-1_7
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DOI: https://doi.org/10.1007/978-981-33-4687-1_7
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