TY - JOUR
T1 - Semantic annotation for computational pathology
T2 - multidisciplinary experience and best practice recommendations
AU - Wahab, Noorul
AU - Miligy, Islam M.
AU - Dodd, Katherine
AU - Sahota, Harvir
AU - Toss, Michael
AU - Lu, Wenqi
AU - Jahanifar, Mostafa
AU - Bilal, Mohsin
AU - Graham, Simon
AU - Park, Young
AU - Hadjigeorghiou, Giorgos
AU - Bhalerao, Abhir
AU - Lashen, Ayat G.
AU - Ibrahim, Asmaa Y.
AU - Katayama, Ayaka
AU - Ebili, Henry O.
AU - Parkin, Matthew
AU - Sorell, Tom
AU - Raza, Shan E.Ahmed
AU - Hero, Emily
AU - Eldaly, Hesham
AU - Tsang, Yee Wah
AU - Gopalakrishnan, Kishore
AU - Snead, David
AU - Rakha, Emad
AU - Rajpoot, Nasir
AU - Minhas, Fayyaz
N1 - Publisher Copyright:
© 2022 The Authors. The Journal of Pathology: Clinical Research published by The Pathological Society of Great Britain and Ireland & John Wiley & Sons, Ltd.
PY - 2022/3
Y1 - 2022/3
N2 - Recent advances in whole-slide imaging (WSI) technology have led to the development of a myriad of computer vision and artificial intelligence-based diagnostic, prognostic, and predictive algorithms. Computational Pathology (CPath) offers an integrated solution to utilise information embedded in pathology WSIs beyond what can be obtained through visual assessment. For automated analysis of WSIs and validation of machine learning (ML) models, annotations at the slide, tissue, and cellular levels are required. The annotation of important visual constructs in pathology images is an important component of CPath projects. Improper annotations can result in algorithms that are hard to interpret and can potentially produce inaccurate and inconsistent results. Despite the crucial role of annotations in CPath projects, there are no well-defined guidelines or best practices on how annotations should be carried out. In this paper, we address this shortcoming by presenting the experience and best practices acquired during the execution of a large-scale annotation exercise involving a multidisciplinary team of pathologists, ML experts, and researchers as part of the Pathology image data Lake for Analytics, Knowledge and Education (PathLAKE) consortium. We present a real-world case study along with examples of different types of annotations, diagnostic algorithm, annotation data dictionary, and annotation constructs. The analyses reported in this work highlight best practice recommendations that can be used as annotation guidelines over the lifecycle of a CPath project.
AB - Recent advances in whole-slide imaging (WSI) technology have led to the development of a myriad of computer vision and artificial intelligence-based diagnostic, prognostic, and predictive algorithms. Computational Pathology (CPath) offers an integrated solution to utilise information embedded in pathology WSIs beyond what can be obtained through visual assessment. For automated analysis of WSIs and validation of machine learning (ML) models, annotations at the slide, tissue, and cellular levels are required. The annotation of important visual constructs in pathology images is an important component of CPath projects. Improper annotations can result in algorithms that are hard to interpret and can potentially produce inaccurate and inconsistent results. Despite the crucial role of annotations in CPath projects, there are no well-defined guidelines or best practices on how annotations should be carried out. In this paper, we address this shortcoming by presenting the experience and best practices acquired during the execution of a large-scale annotation exercise involving a multidisciplinary team of pathologists, ML experts, and researchers as part of the Pathology image data Lake for Analytics, Knowledge and Education (PathLAKE) consortium. We present a real-world case study along with examples of different types of annotations, diagnostic algorithm, annotation data dictionary, and annotation constructs. The analyses reported in this work highlight best practice recommendations that can be used as annotation guidelines over the lifecycle of a CPath project.
KW - annotations
KW - computational pathology
KW - guidelines
KW - whole-slide images
UR - http://www.scopus.com/inward/record.url?scp=85122672783&partnerID=8YFLogxK
U2 - 10.1002/cjp2.256
DO - 10.1002/cjp2.256
M3 - Article
C2 - 35014198
AN - SCOPUS:85122672783
SN - 2056-4538
VL - 8
SP - 116
EP - 128
JO - Journal of Pathology: Clinical Research
JF - Journal of Pathology: Clinical Research
IS - 2
ER -