Machine learning offers means to raise accuracy of cancer analysis

AI collaborators in Britain and the UK have developed a computer system that they say can spot cancer signs in samples with outstanding levels of accuracy.

Titled โ€˜Histomorphological Phenotype Learningโ€™ (HPL), the system created by teams from Glasgow and New York universities, has the potential to enable faster, more accurate diagnoses and reliable predictions of patient outcomes.

Co-senior author of the study published in Nature Communications, professor John Le Quesne, from the University of Glasgowโ€™s School of Cancer Sciences, supervised the research.

He admitted: โ€œWe were surprised but very pleased by the effectiveness of machine learning to tackle this task.โ€

Current procedure involves pathologists examining tissue samples taken from cancer patients on microscope slides under a microscope with their observations helping determine patient treatment and assessing chances of recovery.

โ€œIt takes many years to train human pathologists to identify the cancer subtypes they examine under the microscope and draw conclusions about the most likely outcomes for patients,โ€ he explained.ย 

โ€œItโ€™s a difficult, time-consuming job, and even highly-trained experts can sometimes draw different conclusions from the same slide.โ€

The study began with thousands of high-resolution images of tissue samples of lung adenocarcinoma taken from 452 patients, held in the United States National Cancer Instituteโ€™s Cancer Genome Atlas database, some of which contains information on how patient cancers progressed.

An algorithm was developed that employed the training process self-supervised deep learning to analyse the images and spot patterns based solely on visual data.ย 

It reduced each slide image into thousands of tiny tiles that were scrutinised by a deep neural network able to teach itself to recognise and classify visual features shared across any of the cells in each sample.

Senior author and research supervisor Dr Ke Yuan of Glasgowโ€™s School of Computing Science revealed: โ€œWe didnโ€™t provide the algorithm with any insight into what the samples were or what we expected it to find. Nonetheless, it learned to spot recurring visual elements in the tiles which correspond to textures, cell properties and tissue architectures called phenotypes.

โ€œBy comparing those visual elements across the whole series of images it examined, it recognised phenotypes which often appeared together, independently picking out the architectural patterns that human pathologists had already identified in the samples.โ€

Analysing slides from squamous cell lung cancer, the HPL system distinguished between their features with 99% accuracy.

Researchers used the algorithm to analyse links between the phenotypes it had classified and the clinical outcomes stored in the database.

This revealed that phenotypes such as tumour cells which are less invasive, or lots of inflammatory cells attacking the tumour, were more common in patients who lived longer after treatment. Others, such as aggressive tumour cells forming solid masses, or regions where the immune system was excluded, were more closely associated with the recurrence of tumours.

Predictions for the likelihood and timing of cancerโ€™s return made by the HPL system were correct 72% of the time โ€“ substantially (12.5%) more than human pathologistsโ€™ 64% accuracy.

Similar results were obtained for 10 other types of cancers, claimed the study.

Glasgow's School of Cancer Sciences and School of Computing Science research associate, Dr Adalberto Claudio Quiros, also a co-first author of the paper said the work demonstrated the potential of cutting-edge machine learning.

โ€œThis kind of self-learning algorithm will only become more accurate as additional data is added, helping it become more fluent in the language of cancer. Unlike humans, it brings no preconceived ideas to its work, so it may even find patterns across the datasets that havenโ€™t been fully explored before,โ€ he commented.

โ€œUltimately, our aim is to provide doctors and patients with a tool that can help provide them with an improved understanding of their prognosis and treatment.โ€

Dr Aristotelis Tsirigos and Dr Nicolas Coudray, of New York Universityโ€™s Grossman School of Medicine and Perlmutter Cancer Centre, were co-senior investigator and co-first author on the paper, respectively. Researchers from New York University, University College London and the Karolinska Institute also contributed to the paper.ย 

The paper is titled โ€˜Mapping the landscape of histomorphological cancer phenotypes using self-supervised learning on unlabeled, unannotated pathology slidesโ€™. Research funding came from the Engineering and Physical Sciences Research Council (EPSRC), the Biotechnology and Biological Sciences Research Council (BBSRC), and the National Institutes of Health.

Pic: Dr Ke Yuan, ProfJohn Le Quesne and Dr Adalberto Claudio Quiros | cancer sampleย  machine learning algorithm (Credit UniGlasgow / Chris James)ย 

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