Oesophago-gastric cancer is difficult to diagnose in the early stages given its typical non-specific initial manifestation. We hypothesise that machine learning can improve upon the diagnostic performance of current primary care risk-assessment tools by using advanced analytical techniques to exploit the wealth of evidence available in the electronic health record. We used a primary care electronic health record dataset derived from the UK General Practice Research Database (7471 cases; 32,877 controls) and developed five probabilistic machine learning classifiers: Support Vector Machine, Random Forest, Logistic Regression, Naïve Bayes, and Extreme Gradient Boosted Decision Trees. Features included basic demographics, symptoms, and lab test...
BACKGROUND: More than 17 million people worldwide, including 360,000 people in the United Kingdom, w...
Aim: The purpose of this evaluation was to obtain views from general practitioners (GPs) who piloted...
The inclusion of machine-learning-derived models in systematic reviews of risk prediction models for...
Background: Methods to identify patients at increased risk of oesophageal cancer are needed to bette...
Background: Primary health care (PHC) is often the first point of contact when diagnosing colorectal...
Abstract Background Gastric cancer is one of the leading causes of death worldwide. Screening for ga...
BACKGROUND: Over 15 000 new oesophago-gastric cancers are diagnosed annually in the United Kingdom,...
ArticleBACKGROUND: Over 15 000 new oesophago-gastric cancers are diagnosed annually in the United Ki...
Background: Machine learning (ML) has seen an increase in application, and is an important element o...
The development of malign cells that can grow in any part of the stomach, known as gastric cancer, i...
Background. Gastric cancer is the fourth most common cancer and the third most common cause of cance...
Background: Screening for Barrett’s Oesophagus (BE) relies on endoscopy which is invasive and has a ...
Cancer is one of the most common and serious medical conditions with more than 144 000 Australians h...
Detection of prostate cancer using machine learning techniques: An exploratory study Prostate cance...
BACKGROUND: Pancreatic cancer (PC) represents a substantial public health burden. Pancreatic cancer ...
BACKGROUND: More than 17 million people worldwide, including 360,000 people in the United Kingdom, w...
Aim: The purpose of this evaluation was to obtain views from general practitioners (GPs) who piloted...
The inclusion of machine-learning-derived models in systematic reviews of risk prediction models for...
Background: Methods to identify patients at increased risk of oesophageal cancer are needed to bette...
Background: Primary health care (PHC) is often the first point of contact when diagnosing colorectal...
Abstract Background Gastric cancer is one of the leading causes of death worldwide. Screening for ga...
BACKGROUND: Over 15 000 new oesophago-gastric cancers are diagnosed annually in the United Kingdom,...
ArticleBACKGROUND: Over 15 000 new oesophago-gastric cancers are diagnosed annually in the United Ki...
Background: Machine learning (ML) has seen an increase in application, and is an important element o...
The development of malign cells that can grow in any part of the stomach, known as gastric cancer, i...
Background. Gastric cancer is the fourth most common cancer and the third most common cause of cance...
Background: Screening for Barrett’s Oesophagus (BE) relies on endoscopy which is invasive and has a ...
Cancer is one of the most common and serious medical conditions with more than 144 000 Australians h...
Detection of prostate cancer using machine learning techniques: An exploratory study Prostate cance...
BACKGROUND: Pancreatic cancer (PC) represents a substantial public health burden. Pancreatic cancer ...
BACKGROUND: More than 17 million people worldwide, including 360,000 people in the United Kingdom, w...
Aim: The purpose of this evaluation was to obtain views from general practitioners (GPs) who piloted...
The inclusion of machine-learning-derived models in systematic reviews of risk prediction models for...