Medical

An augmented reality microscope for cancer detection

18th April 2018
Enaie Azambuja
0

Applications of deep learning to medical disciplines including ophthalmology, dermatology, radiology, and pathology have recently shown great promise to increase both the accuracy and availability of high-quality healthcare to patients around the world. Google has also published results showing that a convolutional neural network is able to detect breast cancer metastases in lymph nodes at a level of accuracy comparable to a trained pathologist.

However, because direct tissue visualisation using a compound light microscope remains the predominant means by which a pathologist diagnoses illness, a critical barrier to the widespread adoption of deep learning in pathology is the dependence on having a digital representation of the microscopic tissue.

Today, in a talk delivered at the Annual Meeting of the American Association for Cancer Research (AACR), with an accompanying paper “An Augmented Reality Microscope for Real-time Automated Detection of Cancer” (under review), Google has described a prototype Augmented Reality Microscope (ARM) platform that Google believes can possibly help accelerate and democratise the adoption of deep learning tools for pathologists around the world.

The platform consists of a modified light microscope that enables real-time image analysis and presentation of the results of machine learning algorithms directly into the field of view.

Importantly, the ARM can be retrofitted into existing light microscopes found in hospitals and clinics around the world using low-cost, readily-available components, and without the need for whole slide digital versions of the tissue being analysed.

Modern computational components and deep learning models, such as those built upon TensorFlow, will allow a wide range of pre-trained models to run on this platform. As in a traditional analog microscope, the user views the sample through the eyepiece.

A machine learning algorithm projects its output back into the optical path in real-time. This digital projection is visually superimposed on the original (analog) image of the specimen to assist the viewer in localising or quantifying features of interest.

Importantly, the computation and visual feedback updates quickly — our present implementation runs at approximately 10 frames per second, so the model output updates seamlessly as the user scans the tissue by moving the slide and/or changing magnification.

In principle, the ARM can provide a wide variety of visual feedback, including text, arrows, contours, heatmaps, or animations, and is capable of running many types of machine learning algorithms aimed at solving different problems such as object detection, quantification, or classification.

As a demonstration of the potential utility of the ARM, Google has configured it to run two different cancer detection algorithms: one that detects breast cancer metastases in lymph node specimens, and another that detects prostate cancer in prostatectomy specimens.

These models can run at magnifications between 4-40x, and the result of a given model is displayed by outlining detected tumour regions with a green contour. These contours help draw the pathologist’s attention to areas of interest without obscuring the underlying tumour cell appearance.

While both cancer models were originally trained on images from a whole slide scanner with a significantly different optical configuration, the models performed remarkably well on the ARM with no additional re-training.

For example, the lymph node metastasis model had an area-under-the-curve (AUC) of 0.98 and our prostate cancer model had an AUC of 0.96 for cancer detection in the field of view (FoV) when run on the ARM, only slightly decreased performance than obtained on WSI. Google believe it is likely that the performance of these models can be further improved by additional training on digital images captured directly from the ARM itself.

Google believes that the ARM has potential for a large impact on global health, particularly for the diagnosis of infectious diseases, including tuberculosis and malaria, in developing countries.

Furthermore, even in hospitals that will adopt a digital pathology workflow in the near future, ARM could be used in combination with the digital workflow where scanners still face major challenges or where rapid turnaround is required (e.g. cytology, fluorescent imaging, or intra-operative frozen sections).

Of course, light microscopes have proven useful in many industries other than pathology, and the company believe the ARM can be adapted for a broad range of applications across healthcare, life sciences research, and material science.


Discover more here.

Image credit: Google.

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