An improvised Deep-Learning-based mask R-CNN model for laryngeal cancer detection using CT images
Articolo
Data di Pubblicazione:
2022
Abstract:
Recently, laryngeal cancer cases have increased drastically across the globe. Accurate
treatment for laryngeal cancer is intricate, especially in the later stages. This type of cancer is an
intricate malignancy inside the head and neck area of patients. In recent years, diverse diagnosis
approaches and tools have been developed by researchers for helping clinical experts to identify
laryngeal cancer effectively. However, these existing tools and approaches have diverse issues related
to performance constraints such as lower accuracy in the identification of laryngeal cancer in the
initial stage, more computational complexity, and large time consumption in patient screening. In
this paper, the authors present a novel and enhanced deep-learning-based Mask R-CNN model for
the identification of laryngeal cancer and its related symptoms by utilizing diverse image datasets
and CT images in real time. Furthermore, our suggested model is capable of capturing and detecting
minor malignancies of the larynx portion in a significant and faster manner in the real-time screening
of patients, and it saves time for the clinicians, allowing for more patient screening every day. The
outcome of the suggested model is enhanced and pragmatic and obtained an accuracy of 98.99%,
precision of 98.99%, F1 score of 97.99%, and recall of 96.79% on the ImageNet dataset. Several studies
have been performed in recent years on laryngeal cancer detection by using diverse approaches from
researchers. For the future, there are vigorous opportunities for further research to investigate new
approaches for laryngeal cancer detection by utilizing diverse and large dataset images.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Clinicians; Deep Learning; ImageNet; Laryngeal cancer; Patients
Elenco autori:
Barsocchi, Paolo
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