Label-free screening of brain tissue myelin content using phase imaging with computational specificity (PICS).
Michael FanousChuqiao ShiMegan P CaputoLaurie A RundRodney W JohnsonTapas DasMatthew J KuchanNahil SobhGabriel PopescuPublished in: APL photonics (2021)
Inadequate myelination in the central nervous system is associated with neurodevelopmental complications. Thus, quantitative, high spatial resolution measurements of myelin levels are highly desirable. We used spatial light interference microcopy (SLIM), a highly sensitive quantitative phase imaging (QPI) technique, to correlate the dry mass content of myelin in piglet brain tissue with dietary changes and gestational size. We combined SLIM micrographs with an artificial intelligence (AI) classifying model that allows us to discern subtle disparities in myelin distributions with high accuracy. This concept of combining QPI label-free data with AI for the purpose of extracting molecular specificity has recently been introduced by our laboratory as phase imaging with computational specificity. Training on 8000 SLIM images of piglet brain tissue with the 71-layer transfer learning model Xception, we created a two-parameter classification to differentiate gestational size and diet type with an accuracy of 82% and 80%, respectively. To our knowledge, this type of evaluation is impossible to perform by an expert pathologist or other techniques.
Keyphrases
- artificial intelligence
- label free
- white matter
- high resolution
- deep learning
- machine learning
- big data
- resting state
- weight gain
- multiple sclerosis
- pregnant women
- healthcare
- functional connectivity
- risk factors
- cerebral ischemia
- single molecule
- physical activity
- convolutional neural network
- subarachnoid hemorrhage
- brain injury
- electronic health record
- body mass index
- blood brain barrier
- congenital heart disease
- cerebrospinal fluid
- data analysis