scholarly journals Digital pathology and computational image analysis in nephropathology

2020 ◽  
Vol 16 (11) ◽  
pp. 669-685 ◽  
Author(s):  
Laura Barisoni ◽  
Kyle J. Lafata ◽  
Stephen M. Hewitt ◽  
Anant Madabhushi ◽  
Ulysses G. J. Balis
2021 ◽  
pp. jclinpath-2020-207351
Author(s):  
Jenny Fitzgerald ◽  
Debra Higgins ◽  
Claudia Mazo Vargas ◽  
William Watson ◽  
Catherine Mooney ◽  
...  

Clinical workflows in oncology depend on predictive and prognostic biomarkers. However, the growing number of complex biomarkers contributes to costly and delayed decision-making in routine oncology care and treatment. As cancer is expected to rank as the leading cause of death and the single most important barrier to increasing life expectancy in the 21st century, there is a major emphasis on precision medicine, particularly individualisation of treatment through better prediction of patient outcome. Over the past few years, both surgical and pathology specialties have suffered cutbacks and a low uptake of pathology specialists means a solution is required to enable high-throughput screening and personalised treatment in this area to alleviate bottlenecks. Digital imaging in pathology has undergone an exponential period of growth. Deep-learning (DL) platforms for hematoxylin and eosin (H&E) image analysis, with preliminary artificial intelligence (AI)-based grading capabilities of specimens, can evaluate image characteristics which may not be visually apparent to a pathologist and offer new possibilities for better modelling of disease appearance and possibly improve the prediction of disease stage and patient outcome. Although digital pathology and AI are still emerging areas, they are the critical components for advancing personalised medicine. Integration of transcriptomic analysis, clinical information and AI-based image analysis is yet an uncultivated field by which healthcare professionals can make improved treatment decisions in cancer. This short review describes the potential application of integrative AI in offering better detection, quantification, classification, prognosis and prediction of breast and prostate cancer and also highlights the utilisation of machine learning systems in biomarker evaluation.


ACS Nano ◽  
2019 ◽  
Vol 13 (10) ◽  
pp. 11062-11069 ◽  
Author(s):  
Muhammad Arslan Khalid ◽  
Aniruddha Ray ◽  
Steve Cohen ◽  
Manlio Tassieri ◽  
Andriejus Demčenko ◽  
...  

2020 ◽  
Vol 45 (1) ◽  
pp. 2-11
Author(s):  
Costanza Caraffa ◽  
Emily Pugh ◽  
Tracy Stuber ◽  
Louisa Wood Ruby

The PHAROS consortium of fourteen international art historical photo archives is digitizing the over 20 million images (with accompanying documentation) in its combined collections and has begun to construct a common access platform using Linked Open Data and the ResearchSpace software. In addition to resulting in a rich and substantial database of images for art-historical research, the PHAROS initiative supports the development of shared standards for mapping and sharing photo archive metadata, as well as for best practices for working with large digital image collections and conducting computational image analysis. Moreover, alongside their digitization efforts, PHAROS member institutions are considering the kinds of art-historical questions the resulting database of images could be used to research. This article indicates some of the prospective research directions stimulated by modern technologies, with the aim of exploring the epistemological potential of photographic archives and challenging the boundaries between the analogue and the digital.


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