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Deep Learning Reveals Cancer Metastasis and Therapeutic Antibody Targeting in the Entire Body.

Authors :
Pan C
Schoppe O
Parra-Damas A
Cai R
Todorov MI
Gondi G
von Neubeck B
Böğürcü-Seidel N
Seidel S
Sleiman K
Veltkamp C
Förstera B
Mai H
Rong Z
Trompak O
Ghasemigharagoz A
Reimer MA
Cuesta AM
Coronel J
Jeremias I
Saur D
Acker-Palmer A
Acker T
Garvalov BK
Menze B
Zeidler R
Ertürk A
Source :
Cell [Cell] 2019 Dec 12; Vol. 179 (7), pp. 1661-1676.e19.
Publication Year :
2019

Abstract

Reliable detection of disseminated tumor cells and of the biodistribution of tumor-targeting therapeutic antibodies within the entire body has long been needed to better understand and treat cancer metastasis. Here, we developed an integrated pipeline for automated quantification of cancer metastases and therapeutic antibody targeting, named DeepMACT. First, we enhanced the fluorescent signal of cancer cells more than 100-fold by applying the vDISCO method to image metastasis in transparent mice. Second, we developed deep learning algorithms for automated quantification of metastases with an accuracy matching human expert manual annotation. Deep learning-based quantification in 5 different metastatic cancer models including breast, lung, and pancreatic cancer with distinct organotropisms allowed us to systematically analyze features such as size, shape, spatial distribution, and the degree to which metastases are targeted by a therapeutic monoclonal antibody in entire mice. DeepMACT can thus considerably improve the discovery of effective antibody-based therapeutics at the pre-clinical stage. VIDEO ABSTRACT.<br /> (Copyright © 2019 Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1097-4172
Volume :
179
Issue :
7
Database :
MEDLINE
Journal :
Cell
Publication Type :
Academic Journal
Accession number :
31835038
Full Text :
https://doi.org/10.1016/j.cell.2019.11.013