Periodic Reporting for period 4 - BIOMORPHIC (Brain-Inspired Organic Modular Lab-on-a-Chip for Cell Classification)
Berichtszeitraum: 2023-07-01 bis 2023-12-31
In this project we use a low-cost solution organic artificial synapse as a building-block for these smart systems. The conductance of this single synapse can be accurately tuned by controlled ion injection in the conductive polymer which allows for straightforward low-energy analogue computing. BIOMORPHIC is building an interconnected network of these synapses to obtain a true neuromorphic array. The goal is to develop a unique brain-inspired organic lab-on-a-chip in which microfluidics integrated with sensors, collecting characteristics of biological cells, will serve as input to the neuromorphic array. BIOMORPHIC will combine modular microfluidics and machine-learning to develop a novel platform for low-cost lab-on-a-chip devices capable of on-chip classification. Ultimately the project aims to classify circulating tumour cells on the chip using a multitude of sensor signals trained to recognize these cells.
The project was very successful and includes a number of breakthroughs. We were the first to demonstrate on chip classification of biosignals using organic neuromorphic hardware. We have also shown adaptive biosensing using novel materials. Although we were not able to demonstrate on-chip cancer cell classification, our results do provide a major step towards integrated neuromorphic hardware for healthcare and biosignals classification.
We have successfully developed new (polymer) materials that run in enhancement-mode and thus have larger dynamic ranges (ON/OFF ratios) and operate with lower power. At the same time, we have integrated a solid electrolyte so that the on-chip biosensor neuromorphic hardware can run without fear of water contamination of electronics.
Finally we successfully developed a novel method to train a multilayer hardware neural network and demonstrated how to scale these systems to larger and deeper networks (paper in revision).
We have shown for the first time that training multilayer hardware neural networks is possible directly in hardware (without storing information digitally), and we demonstrated how to scale these systems to larger and deeper networks.