Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients

This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023.

Detalles Bibliográficos
Autores principales: Miami, Anika Tahsin, Mrittika, Anika Priodorshinee, Hossain, Syed Zuhair
Otros Autores: Noor, Jannatun
Formato: Tesis
Lenguaje:English
Publicado: Brac University 2023
Materias:
Acceso en línea:http://hdl.handle.net/10361/21913
id 10361-21913
record_format dspace
institution Brac University
collection Institutional Repository
language English
topic Oncology
Psychiatry
Depression
Free-hand sketches
HCI
EEG
PHQ-9
Machine learning
spellingShingle Oncology
Psychiatry
Depression
Free-hand sketches
HCI
EEG
PHQ-9
Machine learning
Miami, Anika Tahsin
Mrittika, Anika Priodorshinee
Hossain, Syed Zuhair
Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients
description This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023.
author2 Noor, Jannatun
author_facet Noor, Jannatun
Miami, Anika Tahsin
Mrittika, Anika Priodorshinee
Hossain, Syed Zuhair
format Thesis
author Miami, Anika Tahsin
Mrittika, Anika Priodorshinee
Hossain, Syed Zuhair
author_sort Miami, Anika Tahsin
title Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients
title_short Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients
title_full Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients
title_fullStr Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients
title_full_unstemmed Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients
title_sort beyond words: an exploration of free-hand sketches and eeg-based neurobiological signatures to unveil the underlying depression among cancer patients
publisher Brac University
publishDate 2023
url http://hdl.handle.net/10361/21913
work_keys_str_mv AT miamianikatahsin beyondwordsanexplorationoffreehandsketchesandeegbasedneurobiologicalsignaturestounveiltheunderlyingdepressionamongcancerpatients
AT mrittikaanikapriodorshinee beyondwordsanexplorationoffreehandsketchesandeegbasedneurobiologicalsignaturestounveiltheunderlyingdepressionamongcancerpatients
AT hossainsyedzuhair beyondwordsanexplorationoffreehandsketchesandeegbasedneurobiologicalsignaturestounveiltheunderlyingdepressionamongcancerpatients
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spelling 10361-219132023-12-05T05:30:42Z Beyond words: an exploration of free-hand sketches and EEG-based neurobiological signatures to unveil the underlying depression among cancer patients Miami, Anika Tahsin Mrittika, Anika Priodorshinee Hossain, Syed Zuhair Noor, Jannatun Department of Computer Science and Engineering, Brac University Oncology Psychiatry Depression Free-hand sketches HCI EEG PHQ-9 Machine learning This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023. Cataloged from PDF version of thesis. Includes bibliographical references (pages 69-77). Mental well-being is intricately intertwined with physical health and is considered a crucial aspect of an individual’s overall well-being. Due to ever-deteriorating health conditions and uncertainty about the future, people who go through life-changing events like cancer diagnosis are more vulnerable to feeling a wide range of emotional distress such as shock, denial, fear, anxiety, depression, etc. However, low patient-to-psychologist-and-psychiatrist ratios, lack of literacy, social stigma, sensitivity regarding seeking professional help, etc. greatly affect the reliability of existing interview or self-reported questionnaire-based depression screening. Moreover, traditional methods are primarily based on verbal communication, which may not be the most effective way to assess, particularly for non-verbal individuals or those with limited communication skills. To address these issues and broaden the scope of depression diagnosis, our research delved into the potential of incorporating free-hand sketching and EEG features into the depression screening process. In this regard, an in-depth study was conducted among cancer patients of different stages, e.g., stage-1 (n = 25), stage-2 (n = 20), stage-3 (n = 19), and stage-4 (n = 2). Along with demographic data, we collected two free-hand sketches with a theme of ‘self-reflection’ or how they see themselves before and after diagnosis, from each of them. An affordable, consumer-grade, lightweight EEG headset was also used to collect brainwave signals from the participants during their sketching sessions. We identified several potential neurobiological signatures using the EEG signals. Moreover, we used several computational algorithms and manual processing techniques to identify the presence of indicators (hair density, line boldness, dual stroke, lip line, presence of tears, presence of the lower body, and overall body weight depiction) and also to extract dimensional measurements from the images of the free-hand sketches. We found the after-self-reflection sketches of depressed participants to be significantly smaller than the before-self-reflection ones. We used these extracted features, along with demographic data, to train multiple machine learning models for potentially screening depression among cancer patients. Among them, the Support Vector Machine (SVM) model gave the highest accuracy (85%). We developed a Random Forest model with a better accuracy of 94% by integrating relative EEG power with the previously used data. We validated our findings using the PHQ-9 depression screening scale results that were gathered during the data collection phase. Our approach of utilizing EEG-based neurobiological patterns and free-hand sketches allows for the elicitation of naturalistic expressions through non-verbal communication. As a result, our study can pave the way for large-scale research on this relatively newer depression screening approach focused on the minimization of cultural and linguistic barriers and open up new opportunities for interdisciplinary research in the future. Anika Tahsin Miami Anika Priodorshinee Mrittika Syed Zuhair Hossain B.Sc. in Computer Science and Engineering 2023-12-04T06:02:01Z 2023-12-04T06:02:01Z 2023 2023-05 Thesis ID 19101518 ID 19101298 ID 19101573 http://hdl.handle.net/10361/21913 en Brac University theses are protected by copyright. They may be viewed from this source for any purpose, but reproduction or distribution in any format is prohibited without written permission. 77 pages application/pdf Brac University