EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL

The growing use of Artificial Intelligence (AI) today makes many people dependent on AI. However, it could be dangerous if AI is used in critical situations such as the medical field. AI can provide answers that humans cannot understand and if they are wrong it can be fatal. Therefore, Explainabl...

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Main Author: Alwansyah Hilmy, Yusuf
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/78173
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:78173
spelling id-itb.:781732023-09-18T10:34:27ZEXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL Alwansyah Hilmy, Yusuf Indonesia Final Project XAI, Melanoma, Dermatologist INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/78173 The growing use of Artificial Intelligence (AI) today makes many people dependent on AI. However, it could be dangerous if AI is used in critical situations such as the medical field. AI can provide answers that humans cannot understand and if they are wrong it can be fatal. Therefore, Explainable Artificial Intelligence (XAI) research is present to overcome this problem. In the medical field, melanoma detection is a problem that requires XAI so that its predictions can be trusted. Melanoma is a skin cancer that is visually difficult to differentiate. The use of XAI in melanoma detection is important to increase dermatologists' confidence in using it. Therefore, it is necessary to know best XAI method that can explain the melanoma detection model for experts. The process carried out using the CRISP-DM method which is modified according to the problem.The XAI methods used are SHAP, LIME, RISE and Grad-CAM. These methods have advantages over previous studies. This method is implemented on the best melanoma detection model based on Inception-V3. The melanoma detection model was trained using data from ISIC in 2019 and 2020. Model evaluation was carried out in modeling experiments to determine the best model. The results of the implementation of XAI tested on dermatologists show that SHAP and LIME are the best methods. However, there needs to be improvement in cleaning the data used so that the explanation results are not spurious correlations. This spurious correlation occurs in all XAI methods. This is closely related to training data which has a lot of noise. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description The growing use of Artificial Intelligence (AI) today makes many people dependent on AI. However, it could be dangerous if AI is used in critical situations such as the medical field. AI can provide answers that humans cannot understand and if they are wrong it can be fatal. Therefore, Explainable Artificial Intelligence (XAI) research is present to overcome this problem. In the medical field, melanoma detection is a problem that requires XAI so that its predictions can be trusted. Melanoma is a skin cancer that is visually difficult to differentiate. The use of XAI in melanoma detection is important to increase dermatologists' confidence in using it. Therefore, it is necessary to know best XAI method that can explain the melanoma detection model for experts. The process carried out using the CRISP-DM method which is modified according to the problem.The XAI methods used are SHAP, LIME, RISE and Grad-CAM. These methods have advantages over previous studies. This method is implemented on the best melanoma detection model based on Inception-V3. The melanoma detection model was trained using data from ISIC in 2019 and 2020. Model evaluation was carried out in modeling experiments to determine the best model. The results of the implementation of XAI tested on dermatologists show that SHAP and LIME are the best methods. However, there needs to be improvement in cleaning the data used so that the explanation results are not spurious correlations. This spurious correlation occurs in all XAI methods. This is closely related to training data which has a lot of noise.
format Final Project
author Alwansyah Hilmy, Yusuf
spellingShingle Alwansyah Hilmy, Yusuf
EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL
author_facet Alwansyah Hilmy, Yusuf
author_sort Alwansyah Hilmy, Yusuf
title EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL
title_short EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL
title_full EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL
title_fullStr EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL
title_full_unstemmed EXPLAINABLE ARTIFICIAL INTELLIGENCE (XAI) ON MELANOMA DETECTION MODEL
title_sort explainable artificial intelligence (xai) on melanoma detection model
url https://digilib.itb.ac.id/gdl/view/78173
_version_ 1822008504182898688