Literature DB >> 36222817

Spatial Attention-Based Deep Learning System for Breast Cancer Pathological Complete Response Prediction with Serial Histopathology Images in Multiple Stains.

Hongyi Duanmu1, Shristi Bhattarai2, Hongxiao Li2, Chia Cheng Cheng1, Fusheng Wang1, George Teodoro3, Emiel A M Janssen4, Keerthi Gogineni5, Preeti Subhedar5, Ritu Aneja2, Jun Kong2,5.   

Abstract

In triple negative breast cancer (TNBC) treatment, early prediction of pathological complete response (PCR) from chemotherapy before surgical operations is crucial for optimal treatment planning. We propose a novel deep learning-based system to predict PCR to neoadjuvant chemotherapy for TNBC patients with multi-stained histopathology images of serial tissue sections. By first performing tumor cell detection and recognition in a cell detection module, we produce a set of feature maps that capture cell type, shape, and location information. Next, a newly designed spatial attention module integrates such feature maps with original pathology images in multiple stains for enhanced PCR prediction in a dedicated prediction module. We compare it with baseline models that either use a single-stained slide or have no spatial attention module in place. Our proposed system yields 78.3% and 87.5% of accuracy for patch-, and patient-level PCR prediction, respectively, outperforming all other baseline models. Additionally, the heatmaps generated from the spatial attention module can help pathologists in targeting tissue regions important for disease assessment. Our system presents high efficiency and effectiveness and improves interpretability, making it highly promising for immediate clinical and translational impact.

Entities:  

Keywords:  Breast cancer; Convolutional neural network; Pathological complete response; Serial pathology images; Spatial attention

Year:  2021        PMID: 36222817      PMCID: PMC9535677          DOI: 10.1007/978-3-030-87237-3_53

Source DB:  PubMed          Journal:  Med Image Comput Comput Assist Interv


  17 in total

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Review 2.  A survey on deep learning in medical image analysis.

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3.  Ki67 assessment in breast cancer: an update.

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Journal:  Eur Radiol       Date:  2011-11-20       Impact factor: 5.315

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Journal:  Radiother Oncol       Date:  2010-12-20       Impact factor: 6.280

Review 6.  Deep Learning in Medical Image Analysis.

Authors:  Dinggang Shen; Guorong Wu; Heung-Il Suk
Journal:  Annu Rev Biomed Eng       Date:  2017-03-09       Impact factor: 9.590

7.  Oestrogen receptor status, pathological complete response and prognosis in patients receiving neoadjuvant chemotherapy for early breast cancer.

Authors:  A E Ring; I E Smith; S Ashley; L G Fulford; S R Lakhani
Journal:  Br J Cancer       Date:  2004-12-13       Impact factor: 7.640

8.  HSET overexpression fuels tumor progression via centrosome clustering-independent mechanisms in breast cancer patients.

Authors:  Vaishali Pannu; Padmashree C G Rida; Angela Ogden; Ravi Chakra Turaga; Shashikiran Donthamsetty; Nathan J Bowen; Katie Rudd; Meenakshi V Gupta; Michelle D Reid; Guilherme Cantuaria; Claire E Walczak; Ritu Aneja
Journal:  Oncotarget       Date:  2015-03-20

9.  Computational pathology of pre-treatment biopsies identifies lymphocyte density as a predictor of response to neoadjuvant chemotherapy in breast cancer.

Authors:  H Raza Ali; Aliakbar Dariush; Elena Provenzano; Helen Bardwell; Jean E Abraham; Mahesh Iddawela; Anne-Laure Vallier; Louise Hiller; Janet A Dunn; Sarah J Bowden; Tamas Hickish; Karen McAdam; Stephen Houston; Mike J Irwin; Paul D P Pharoah; James D Brenton; Nicholas A Walton; Helena M Earl; Carlos Caldas
Journal:  Breast Cancer Res       Date:  2016-02-16       Impact factor: 6.466

10.  Prediction of pathological complete response to neoadjuvant chemotherapy in breast cancer using a deep learning (DL) method.

Authors:  Yu-Hong Qu; Hai-Tao Zhu; Kun Cao; Xiao-Ting Li; Meng Ye; Ying-Shi Sun
Journal:  Thorac Cancer       Date:  2020-01-16       Impact factor: 3.500

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