GANDA: A deep generative adversarial network predicts the spatial distribution of nanoparticles in tumor pixelly
December 23, 2020 Β· Declared Dead Β· π Journal of Controlled Release
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Authors
Jiulou Zhang, Yuxia Tang, Shouju Wang
arXiv ID
2012.12561
Category
eess.IV: Image & Video Processing
Cross-listed
cs.CV,
cs.LG
Citations
31
Venue
Journal of Controlled Release
Last Checked
4 months ago
Abstract
Intratumoral nanoparticles (NPs) distribution is critical for the success of nanomedicine in imaging and treatment, but computational models to describe the NPs distribution remain unavailable due to the complex tumor-nano interactions. Here, we develop a Generative Adversarial Network for Distribution Analysis (GANDA) to describe and conditionally generates the intratumoral quantum dots (QDs) distribution after i.v. injection. This deep generative model is trained automatically by 27 775 patches of tumor vessels and cell nuclei decomposed from whole-slide images of 4T1 breast cancer sections. The GANDA model can conditionally generate images of intratumoral QDs distribution under the constraint of given tumor vessels and cell nuclei channels with the same spatial resolution (pixels-to-pixels), minimal loss (mean squared error, MSE = 1.871) and excellent reliability (intraclass correlation, ICC = 0.94). Quantitative analysis of QDs extravasation distance (ICC = 0.95) and subarea distribution (ICC = 0.99) is allowed on the generated images without knowing the real QDs distribution. We believe this deep generative model may provide opportunities to investigate how influencing factors affect NPs distribution in individual tumors and guide nanomedicine optimization for molecular imaging and personalized treatment.
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