Harley Quinn 2024 Square Wall Calendar

M T, Raghuraman

Omschrijving

Machine Learning Predicts Thyroid Disorder from Spectroscopy by M. T. Raghuraman is an innovative and comprehensive guide that explores the use of machine learning techniques for predicting thyroid disorders from spectroscopy data. With the increasing demand for early diagnosis and treatment of thyroid disorders, the book focuses on the potential of machine learning algorithms for medical diagnosis in the context of artificial intelligence and health care. The book covers a wide range of topics, from pattern recognition and feature selection to supervised and unsupervised learning, as well as the use of decision trees, support vector machines, random forests, neural networks, and deep learning for predictive modeling. The author highlights the importance of data science and statistical learning in thyroid disorder prediction and early detection, and the role of biomarkers in precision medicine and endocrinology. The book also delves into medical imaging, molecular diagnosis, bioinformatics, and multivariate analysis, and provides insights into the use of high-throughput technologies for feature extraction and model interpretation. The author discusses the impact of signal processing, spectral analysis, and dimensionality reduction on machine learning performance, and explores the role of computational biology in proteomics, metabolomics, genomics, and transcriptomics. Overall, Machine Learning Predicts Thyroid Disorder from Spectroscopy is an essential resource for researchers, clinicians, and students in the fields of biomedical engineering, biostatistics, and medical diagnosis. The book offers a detailed and comprehensive analysis of the use of machine learning techniques for thyroid disorder prediction, and provides practical insights into the development and evaluation of predictive models for health care applications.
€ 12,65
Kalender
 
Gratis verzending vanaf
€ 19,95 binnen Nederland
Schrijver
M T, Raghuraman
Titel
Harley Quinn 2024 Square Wall Calendar
Uitgever
Danilo Promotions Limited
Jaar
2023
Taal
Engels
Pagina's
126
Gewicht
230 gr
EAN
9781805270508
Afmetingen
304 x 306 x 5 mm
Bindwijze
Kalender

U ontvangt bij ons altijd de laatste druk!


Rubrieken

Boekstra