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Study Complete Details




Project Accession: IBIAP_1000000010
Title: Histopathological images of thyroid lesions
Representative Image:
Description: The dataset comprises 154,498 images derived from 134 slides, representing 125 thyroid nodules from 118 patients. These images encompass six types of thyroid lesions: NIFTP, HTN, FA, IEFVPTC, IFSPTC, and CPTC.
Publications: https://link.springer.com/article/10.1007/s12022-025-09865-0
Associated Codes (URL only): N/A
Funding agency: DBT
Grant Number: BT/PR34211/AI/133/1/2019
Ethics Statement: N/A
Any Other Information : N/A
Additional File: N/A
Acknowledgments: This work was supported by the Department of Biotechnology (DBT) [grant numbers BT/PR34211/AI/133/1/2019 and BT/PR40151/BTIS/137/5/2021]. We would like to express our gratitude to the patients who participated in the study, as well as to the AIIMS and ICGEB for providing the necessary infrastructure for conducting the study. We acknowledge Chhaya, Ashish, Divya and Dhairya's crucial assistance in image QC data curation.

Sr.No First name Last name Email Organization Designation
1 Shweta Birla sbirla84@gmail.com International Centre for Genetic Engineering Biotechnology (ICGEB) Postdoctoral Researcher
2 Nimisha Tiwari nimi.tiwari08@gmail.com International Centre for Genetic Engineering Biotechnology (ICGEB) Research Scholar
3 Pragati Shyamal pragatishyamal1@gmail.com All India Institute of Medical Sciences (AIIMS) Unspecified
4 Arundhati Sharma arundhatisharma1@gmail.com All India Institute of Medical Sciences (AIIMS) Co-Investigator
5 Shipra Agarwal drshipra0902@gmail.com All India Institute of Medical Sciences (AIIMS) Principal Investigator
6 Dinesh Gupta dinesh@icgeb.res.in International Centre for Genetic Engineering Biotechnology (ICGEB) Co-Principal Investigator

Study Accession: HISTOS_1000000014
Title: Utility of Artificial Intelligence in differentiating Non- invasive Follicular Thyroid Neoplasm with Papillary like Nuclear Features from other follicular-patterned thyroid benign and malignant lesions
Imaging Type: Histopathology (HISTO)
Imaging Sub-type: Diagnostic Pathology
Summary: The introduction of the term non-invasive follicular thyroid neoplasm with papillary-like nuclear features (NIFTP) in 2016 marked a pivotal shift in the classification of encapsulated follicular variants of papillary thyroid carcinoma (eFVPTC) lacking invasive features. While this reclassification significantly reduced overtreatment, the histopathological diagnosis of NIFTP remains challenging due to overlapping features with other thyroid lesions and inter-observer variability. This study presents a novel deep learning (DL)-based, three-stage diagnostic pipeline for distinguishing NIFTP from a wide spectrum of thyroid lesions, including benign and malignant mimics. By replicating the diagnostic strategy of histopathologists, the algorithm evaluates architectural patterns and nuclear features with high precision. Our approach has a potential to enhance diagnostic accuracy in a cost-effective and scalable manner, complementing existing diagnostic methods and thus optimizing clinical decision-making and improving the management of patients with thyroid neoplasms.
Keywords: Histopathology; Deep-Learning; Differential Diagnosis; Thyroid Cancers
Additional / Any Other Information: N/A
Release Date: June 2, 2025
Access Licence Type: Open Access

Table 1. The sample types registered under this study are as follows:
Sample Type IDOrganismTaxon IDBiological EntityLateralitySource TissueSource Cell/Cell-lineCell Organelle
HISTOSMT_10000000038Homo sapiens 9606 Thyroid GlandNot ApplicableThyroid gland tissueN/AN/A

Table 2. The samples registered under this study are as follows:
Sample Type ID Sample ID Method used for Sample Collection Cell Phenotype Studied ICD-11 Code (patient health condition) Presentation / Clinical Diagnosis
HISTOSMT_10000000038 HISTOSM_10000102746 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102747 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102748 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102749 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102758 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102759 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102760 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102761 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102769 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102770 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102777 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102778 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102779 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102783 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102784 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102785 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102786 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102799 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102800 N/A N/A 5A01.2 FND
HISTOSMT_10000000038 HISTOSM_10000102807 N/A N/A 5A01.2 FND

Table 3. The experiment types registered under this study are as follows:
Experiment Type IDInstrument NameInstrument TypeManufacturerModel
HISTOET_10000000015Digital Slide Scanning SystemDigital Slide ScannerMoticVM1


Experimental Design Summary (HISTOET_10000000015)
Hematoxylin and Eosin (H&E)-stained slides of histopathologically-confirmed cases of FND, HTN,FA, NIFTP, IEFVPTC, IFSPTC, and CPTC patients were retrieved from the archives of the Department of Pathology, All India Institute of Medical Sciences (AIIMS), New Delhi, India, spanning the period from 2015 to 2023. The corresponding slides were further reviewed by an experienced endocrine pathologist to reconfirm the diagnosis and select representative slides for further analysis. The diagnosis adhered to the criteria outlined in the most recent WHO classification of thyroid neoplasms The selected H&E slides were scanned at 40x magnification (equivalent to 0.25 μm/pixel) using the Motic VM1 whole slide scanner to generate whole slide images (WSIs). The slides were than subjected to AI studies.

Acquired Images Annotation Description (HISTOET_10000000015)
WHO defining criteria for the various thyroid lesions included in the study. For more details, please refer to "Additional File" of the "Project" section for this record.

Table 4. The experiments registered under this study are as follows:
Sample ID Experiment Type ID Experiment ID Image type (Original / Derived / Unknown) Any Other Information Staining Type Images Magnification Tissue / Tumor Fixative Used Dataset Split Type (Training / Validation / Test)
HISTOSM_10000223846 HISTOET_10000000015 HISTOE_10000196862 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223847 HISTOET_10000000015 HISTOE_10000196863 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000242470 HISTOET_10000000015 HISTOE_10000215430 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Internal Test Dataset
HISTOSM_10000223850 HISTOET_10000000015 HISTOE_10000196866 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223852 HISTOET_10000000015 HISTOE_10000196868 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223853 HISTOET_10000000015 HISTOE_10000196869 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223854 HISTOET_10000000015 HISTOE_10000196870 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223855 HISTOET_10000000015 HISTOE_10000196871 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223856 HISTOET_10000000015 HISTOE_10000196872 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223857 HISTOET_10000000015 HISTOE_10000196873 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223858 HISTOET_10000000015 HISTOE_10000196874 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223859 HISTOET_10000000015 HISTOE_10000196875 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223860 HISTOET_10000000015 HISTOE_10000196876 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223861 HISTOET_10000000015 HISTOE_10000196877 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223862 HISTOET_10000000015 HISTOE_10000196878 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223863 HISTOET_10000000015 HISTOE_10000196879 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223864 HISTOET_10000000015 HISTOE_10000196880 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223865 HISTOET_10000000015 HISTOE_10000196881 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223866 HISTOET_10000000015 HISTOE_10000196882 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset
HISTOSM_10000223869 HISTOET_10000000015 HISTOE_10000196885 Derived N/A Hematoxylin and Eosin (H&E) 40x 10% Neutral buffered formalin Training Dataset

Experiment ID Image File Name (with path) Image Preview Image Size
HISTOE_10000128275thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3292.tiff Unable to preview image
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40K
HISTOE_10000128276thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3293.tiff Unable to preview image
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40K
HISTOE_10000128277thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3294.tiff Unable to preview image
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44K
HISTOE_10000128278thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3295.tiff Unable to preview image
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40K
HISTOE_10000128279thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3296.tiff Unable to preview image
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40K
HISTOE_10000128280thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3297.tiff Unable to preview image
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40K
HISTOE_10000128281thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3298.tiff Unable to preview image
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44K
HISTOE_10000128282thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_3299.tiff Unable to preview image
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40K
HISTOE_10000128283thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_329.tiff Unable to preview image
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68K
HISTOE_10000128284thyroid_lesions/STAGE2_STID/ET_STID/ET_NPTCLF/ET_NPTCLF_32.tiff Unable to preview image
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48K