High-resolution AI image dataset for diagnosing oral submucous fibrosis and squamous cell carcinoma

Oral cancer is a global health challenge with a difficult histopathological diagnosis. The accurate histopathological interpretation of oral cancer tissue samples remains difficult. However, early diagnosis is very challenging due to a lack of experienced pathologists and inter- observer variability...

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Veröffentlicht in:Scientific data 2024-09, Vol.11 (1), p.1050-10, Article 1050
Hauptverfasser: Chaudhary, Nisha, Rai, Arpita, Rao, Aakash Madhav, Faizan, Md Imam, Augustine, Jeyaseelan, Chaurasia, Akhilanand, Mishra, Deepika, Chandra, Akhilesh, Chauhan, Varnit, Ahmad, Tanveer
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Sprache:eng
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Zusammenfassung:Oral cancer is a global health challenge with a difficult histopathological diagnosis. The accurate histopathological interpretation of oral cancer tissue samples remains difficult. However, early diagnosis is very challenging due to a lack of experienced pathologists and inter- observer variability in diagnosis. The application of artificial intelligence (deep learning algorithms) for oral cancer histology images is very promising for rapid diagnosis. However, it requires a quality annotated dataset to build AI models. We present ORCHID ( OR al C ancer H istology I mage D atabase), a specialized database generated to advance research in AI-based histology image analytics of oral cancer and precancer. The ORCHID database is an extensive multicenter collection of high-resolution images captured at 1000X effective magnification (100X objective lens), encapsulating various oral cancer and precancer categories, such as oral submucous fibrosis (OSMF) and oral squamous cell carcinoma (OSCC). Additionally, it also contains grade-level sub-classifications for OSCC, such as well- differentiated (WD), moderately-differentiated (MD), and poorly-differentiated (PD). The database seeks to aid in developing innovative artificial intelligence-based rapid diagnostics for OSMF and OSCC, along with subtypes.
ISSN:2052-4463
2052-4463
DOI:10.1038/s41597-024-03836-6