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Hauptverfasser: Alsalemi, Abdullah, Shakeel, Anza, Clark, Mollie, Khurram, Syed Ali, Raza, Shan E Ahmed
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2405.01937
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author Alsalemi, Abdullah
Shakeel, Anza
Clark, Mollie
Khurram, Syed Ali
Raza, Shan E Ahmed
author_facet Alsalemi, Abdullah
Shakeel, Anza
Clark, Mollie
Khurram, Syed Ali
Raza, Shan E Ahmed
contents Early detection of cancer can help improve patient prognosis by early intervention. Head and neck cancer is diagnosed in specialist centres after a surgical biopsy, however, there is a potential for these to be missed leading to delayed diagnosis. To overcome these challenges, we present an attention based pipeline that identifies suspected lesions, segments, and classifies them as non-dysplastic, dysplastic and cancerous lesions. We propose (a) a vision transformer based Mask R-CNN network for lesion detection and segmentation of clinical images, and (b) Multiple Instance Learning (MIL) based scheme for classification. Current results show that the segmentation model produces segmentation masks and bounding boxes with up to 82% overlap accuracy score on unseen external test data and surpassing reviewed segmentation benchmarks. Next, a classification F1-score of 85% on the internal cohort test set. An app has been developed to perform lesion segmentation taken via a smart device. Future work involves employing endoscopic video data for precise early detection and prognosis.
format Preprint
id arxiv_https___arxiv_org_abs_2405_01937
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An Attention Based Pipeline for Identifying Pre-Cancer Lesions in Head and Neck Clinical Images
Alsalemi, Abdullah
Shakeel, Anza
Clark, Mollie
Khurram, Syed Ali
Raza, Shan E Ahmed
Computer Vision and Pattern Recognition
Early detection of cancer can help improve patient prognosis by early intervention. Head and neck cancer is diagnosed in specialist centres after a surgical biopsy, however, there is a potential for these to be missed leading to delayed diagnosis. To overcome these challenges, we present an attention based pipeline that identifies suspected lesions, segments, and classifies them as non-dysplastic, dysplastic and cancerous lesions. We propose (a) a vision transformer based Mask R-CNN network for lesion detection and segmentation of clinical images, and (b) Multiple Instance Learning (MIL) based scheme for classification. Current results show that the segmentation model produces segmentation masks and bounding boxes with up to 82% overlap accuracy score on unseen external test data and surpassing reviewed segmentation benchmarks. Next, a classification F1-score of 85% on the internal cohort test set. An app has been developed to perform lesion segmentation taken via a smart device. Future work involves employing endoscopic video data for precise early detection and prognosis.
title An Attention Based Pipeline for Identifying Pre-Cancer Lesions in Head and Neck Clinical Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.01937