Deep learning-based transformation of H&E stained tissues into special stains

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作者
Kevin de Haan
Yijie Zhang
Jonathan E. Zuckerman
Tairan Liu
Anthony E. Sisk
Miguel F. P. Diaz
Kuang-Yu Jen
Alexander Nobori
Sofia Liou
Sarah Zhang
Rana Riahi
Yair Rivenson
W. Dean Wallace
Aydogan Ozcan
机构
[1] University of California,Electrical and Computer Engineering Department
[2] University of California,Bioengineering Department
[3] University of California,California NanoSystems Institute (CNSI)
[4] University of California,Department of Pathology and Laboratory Medicine, David Geffen School of Medicine
[5] Los Angeles,Kaiser Permanente Los Angeles Medical Center
[6] Department of Pathology,Department of Pathology and Laboratory Medicine
[7] University of California at Davis,Department of Pathology and Laboratory Medicine
[8] Keck School of Medicine of USC,Department of Surgery, David Geffen School of Medicine
[9] University of California,undefined
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摘要
Pathology is practiced by visual inspection of histochemically stained tissue slides. While the hematoxylin and eosin (H&E) stain is most commonly used, special stains can provide additional contrast to different tissue components. Here, we demonstrate the utility of supervised learning-based computational stain transformation from H&E to special stains (Masson’s Trichrome, periodic acid-Schiff and Jones silver stain) using kidney needle core biopsy tissue sections. Based on the evaluation by three renal pathologists, followed by adjudication by a fourth pathologist, we show that the generation of virtual special stains from existing H&E images improves the diagnosis of several non-neoplastic kidney diseases, sampled from 58 unique subjects (P = 0.0095). A second study found that the quality of the computationally generated special stains was statistically equivalent to those which were histochemically stained. This stain-to-stain transformation framework can improve preliminary diagnoses when additional special stains are needed, also providing significant savings in time and cost.
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