Deep Learning-based Frozen Section to FFPE Translation
Kutsev Bengisu Ozyoruk, Sermet Can, Guliz Irem Gokceler, Kayhan Basak,, Derya Demir, Gurdeniz Serin, Uguray Payam Hacisalihoglu, Emirhan, Kurtulu\c{s}, Berkan Darbaz, Ming Y. Lu, Tiffany Y. Chen, Drew F. K., Williamson, Funda Yilmaz, Faisal Mahmood, Mehmet Turan

TL;DR
This paper introduces AI-FFPE, a deep learning method that rapidly transforms frozen section images into FFPE-style images, reducing artefacts and improving diagnostic accuracy during surgery.
Contribution
The novel AI-FFPE approach computationally converts frozen section images into high-quality FFPE-like images in minutes, aiding intra-operative diagnosis.
Findings
AI-FFPE reduces artefacts in frozen sections
Generated images improve diagnostic accuracy
Validated by pathologists' visual Turing tests
Abstract
Frozen sectioning (FS) is the preparation method of choice for microscopic evaluation of tissues during surgical operations. The high speed of the procedure allows pathologists to rapidly assess the key microscopic features, such as tumour margins and malignant status to guide surgical decision-making and minimise disruptions to the course of the operation. However, FS is prone to introducing many misleading artificial structures (histological artefacts), such as nuclear ice crystals, compression, and cutting artefacts, hindering timely and accurate diagnostic judgement of the pathologist. Additional training and prolonged experience is often required to make highly effective and time-critical diagnosis on frozen sections. On the other hand, the gold standard tissue preparation technique of formalin-fixation and paraffin-embedding (FFPE) provides significantly superior image quality,…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Colorectal Cancer Screening and Detection
