An Approach for Thyroid Nodule Analysis Using Thermographic Images
Quick Take
This study reviews thermography for thyroid nodule detection, proposing protocols for image acquisition and analysis, including feature extraction and classification of patient health. The pilot project aims to enhance early cancer detection in a university hospital setting.
Key Points
- Thermography is increasingly used for early detection of thyroid cancer.
- Proposed protocols include autonomous registration and image processing techniques.
- The project will be submitted for ethical approval to Brazilian health authorities.
- Focus on improving diagnostic accuracy in endocrinology departments.
- Pilot project aims to support preventive medical actions in a university hospital.
Article Content
From source RSS / original summaryarXiv:2605. 29221v1 Announce Type: new Abstract: Thyroid cancer is said to be the second most common type of cancer in female individuals and the third in males by 2030, according to projections. In general, detecting cancer in its early stages improves the chance of survival of the individual. Thermography is a diagnostic tool that has been increasingly used to detect cancer and abnormalities, including that of thyroid.
Various methods to segment and detect hot regions in thermograms and, consequently, to detect suspicious tissues present in these images have been proposed. It is well known that medical diagnosis yields a great deal of information. Thus, physicians have to comprehensively analyse and evaluate this information in a short period of time, which is infeasible in most cases. In this work, we perform a general review of thermography , focusing on the thyroid analysis.
We propose protocols for image acquisiton and an autonomous registration for thyroid images. We also perform analyses of the image data, which include feature extraction, image processing, and a possible approach for classification of healthy or unhealthy patients. In summary, this work presents a pilot project for detection of tumors in our university hospital, which is part of an effort to support preventive medical actions in our endocrinology department.
Under some future adjustments, this project will be submitted for approval by the ethics and research committee of Hospital Universit\'ario Antonio Pedro at Universidade Federal Fluminense (HUAP-UFF) and to the Brazilian Ministry of Health Ethical committee under the name: Evaluation of the importance of thermography to aid diagnosis of thyroid nodules of patients in HUAP-UFF (in Portuguese: Avalia\c{c}\~ao da import\^ancia da termografia no aux\'ilio \`a investiga\c{c}\~ao diagn\'ostica de n\'odulos tireoidianos em pacientes acompanhados no HUAP-UFF).
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