Javascript must be enabled to continue!
A systematic analysis of deep learning in genomics and histopathology for precision oncology
View through CrossRef
Abstract
Background
Digitized histopathological tissue slides and genomics profiling data are available for many patients with solid tumors. In the last 5 years, Deep Learning (DL) has been broadly used to extract clinically actionable information and biological knowledge from pathology slides and genomic data in cancer. In addition, a number of recent studies have introduced multimodal DL models designed to simultaneously process both images from pathology slides and genomic data as inputs. By comparing patterns from one data modality with those in another, multimodal DL models are capable of achieving higher performance compared to their unimodal counterparts. However, the application of these methodologies across various tumor entities and clinical scenarios lacks consistency.
Methods
Here, we present a systematic survey of the academic literature from 2010 to November 2023, aiming to quantify the application of DL for pathology, genomics, and the combined use of both data types. After filtering 3048 publications, our search identified 534 relevant articles which then were evaluated by basic (diagnosis, grading, subtyping) and advanced (mutation, drug response and survival prediction) application types, publication year and addressed cancer tissue.
Results
Our analysis reveals a predominant application of DL in pathology compared to genomics. However, there is a notable surge in DL incorporation within both domains. Furthermore, while DL applied to pathology primarily targets the identification of histology-specific patterns in individual tissues, DL in genomics is more commonly used in a pan-cancer context. Multimodal DL, on the contrary, remains a niche topic, evidenced by a limited number of publications, primarily focusing on prognosis predictions.
Conclusion
In summary, our quantitative analysis indicates that DL not only has a well-established role in histopathology but is also being successfully integrated into both genomic and multimodal applications. In addition, there is considerable potential in multimodal DL for harnessing further advanced tasks, such as predicting drug response. Nevertheless, this review also underlines the need for further research to bridge the existing gaps in these fields.
Springer Science and Business Media LLC
Title: A systematic analysis of deep learning in genomics and histopathology for precision oncology
Description:
Abstract
Background
Digitized histopathological tissue slides and genomics profiling data are available for many patients with solid tumors.
In the last 5 years, Deep Learning (DL) has been broadly used to extract clinically actionable information and biological knowledge from pathology slides and genomic data in cancer.
In addition, a number of recent studies have introduced multimodal DL models designed to simultaneously process both images from pathology slides and genomic data as inputs.
By comparing patterns from one data modality with those in another, multimodal DL models are capable of achieving higher performance compared to their unimodal counterparts.
However, the application of these methodologies across various tumor entities and clinical scenarios lacks consistency.
Methods
Here, we present a systematic survey of the academic literature from 2010 to November 2023, aiming to quantify the application of DL for pathology, genomics, and the combined use of both data types.
After filtering 3048 publications, our search identified 534 relevant articles which then were evaluated by basic (diagnosis, grading, subtyping) and advanced (mutation, drug response and survival prediction) application types, publication year and addressed cancer tissue.
Results
Our analysis reveals a predominant application of DL in pathology compared to genomics.
However, there is a notable surge in DL incorporation within both domains.
Furthermore, while DL applied to pathology primarily targets the identification of histology-specific patterns in individual tissues, DL in genomics is more commonly used in a pan-cancer context.
Multimodal DL, on the contrary, remains a niche topic, evidenced by a limited number of publications, primarily focusing on prognosis predictions.
Conclusion
In summary, our quantitative analysis indicates that DL not only has a well-established role in histopathology but is also being successfully integrated into both genomic and multimodal applications.
In addition, there is considerable potential in multimodal DL for harnessing further advanced tasks, such as predicting drug response.
Nevertheless, this review also underlines the need for further research to bridge the existing gaps in these fields.
Related Results
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Do evidence summaries increase health policy‐makers' use of evidence from systematic reviews? A systematic review
Do evidence summaries increase health policy‐makers' use of evidence from systematic reviews? A systematic review
This review summarizes the evidence from six randomized controlled trials that judged the effectiveness of systematic review summaries on policymakers' decision making, or the most...
Genomics and society: four scenarios for 2015
Genomics and society: four scenarios for 2015
This paper develops four alternative scenarios depicting possible futures for genomics applications within a broader social context. The scenarios integrate forecasts for future ge...
Genomics education for medical specialists: case-based specialty workshops and blended learning
Genomics education for medical specialists: case-based specialty workshops and blended learning
Aim: To develop and evaluate genomics education programs for health professionals to expedite the translation of genomics into healthcare. Methods: Our co-design team of genetic s...
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Abstract
Introduction
The exact manner in which large language models (LLMs) will be integrated into pathology is not yet fully comprehended. This study examines the accuracy, bene...
Accuracy of medical oncology prognosis for patients with metastatic cancer evaluated for enrollment onto an ongoing randomized clinical trial.
Accuracy of medical oncology prognosis for patients with metastatic cancer evaluated for enrollment onto an ongoing randomized clinical trial.
12063 Background: For patients with metastatic cancer, a key aspect of interdisciplinary care has involved the overall prognosis provided by Medical Oncology, which often dictates...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
Energy-efficient architectures for recurrent neural networks
Energy-efficient architectures for recurrent neural networks
Deep Learning algorithms have been remarkably successful in applications such as Automatic Speech Recognition and Machine Translation. Thus, these kinds of applications are ubiquit...

