Коэн Янив ИК-спектрография и томография тканей человека и их анализ методами машинного обучения



  • Название:
  • Коэн Янив ИК-спектрография и томография тканей человека и их анализ методами машинного обучения
  • Альтернативное название:
  • Коен Янів ІЧ-спектрографія та томографія тканин людини та їх аналіз методами машинного навчання
  • Кол-во страниц:
  • 123
  • ВУЗ:
  • Высшая Школа Экономики
  • Год защиты:
  • 2022
  • Краткое описание:
  • Коэн Янив ИК-спектрография и томография тканей человека и их анализ методами машинного обучения
    ОГЛАВЛЕНИЕ ДИССЕРТАЦИИ
    кандидат наук Коэн Янив
    Contents

    LIST OF ABBREVIATIONS

    ACKNOLEDGMENTS

    INTRODUCTION

    The Relevance of the Research

    The Objectives and Goals of Dissertation

    The Scientific Novelty of the Study

    The Practical Significance

    The Key Findings of the Thesis to Be Defended

    Methodology used in Dissertation

    Authenticity of the results

    The author's personal contribution

    Approbation of Research Results

    The list of the published articles where the main scientific results of the thesis are reflected

    The Structure of Dissertation

    CHAPTER 1. IR TOMOGRAPHY

    1.1 Overview

    1.2 Current State of the Art

    1.3 Theoretical Background of the IR Tomography and IR Spectroscopy of Cancerous and Anomalous Biological Structures Detection and Identification

    1.4 Cooling and heating of cancerous structures

    1.5 Diameter and depth of the tumor

    1.6 Experimental Clinical Tests

    1.7 In-Vitro thermal imaging by use of Laparoscopic procedure

    1.8 Results and Discussion

    1.9 Conclusion

    CHAPTER 2. DEVICES AND INSTRUMENTS

    2.1 Field and background

    2.2 Basic principles of FTIR-ATR detection

    2.3 Information yielded

    2.4 The means of operation

    2.5 Brief Description of Medical I.R.O.S

    2.6 Flow chart and short explanation

    2.7 DATA BASE AND CLOUD PRESENTATION AND DESCRIPTION

    CHAPTER 3. FTIR-ATR DATA CLASSIFICATION

    3.1 Problem description: Cancer Detection

    3.2 Data preparation and pre-processing

    3.3 Machine Learning approach for classification

    3.4 Partial least square regression (PLSR) and Principal component regression (PCR)

    3

    3.5 Training, calibration and validation

    3.6 PCR/PLSR Summary

    3.7 Linear Discriminant Analysis (LDA)

    3.8 Naive Bayes classifier (NBC)

    3.9 Conclusions of Machine Learning classifiers

    3.10 Spectral biomarkers for discrimination between Normal and Malignant cells

    CHAPTER 4. ARTIFICIAL NEURAL NETWORK

    4.1 ANN concept - BASIC DEFINITIONS

    4.2 Biological Neuron

    4.3 Artificial Neuron

    4.4 Multi-layer feed forward network

    4.5 Feedforward error back-propagation Network

    4.6 Basic MLFF network configuration

    4.7 Feed-forward ANN classifier design

    4.8 Network training Algorithms

    4.9 Preliminary practical results

    4.10 Conclusions

    CHAPTER 5. SUMMARY

    CHAPTER 6. PRACTICAL APPLICATIONS

    CONCLUSION

    REFERENCES

    ANNEX: BACKGROUND TO THE SUBJECT
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  • 230.00 руб


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