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      Genetic circuits combined with machine learning provides fast responding living sensors

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      Author(s)
      Saltepe, Behide
      Bozkurt, Eray Ulaş
      Güngen, Murat Alp
      Çiçek, A. Ercüment
      Şeker, Urartu Özgür Şafak
      Date
      2021-04-15
      Source Title
      Biosensors and Bioelectronics
      Print ISSN
      0956-5663
      Electronic ISSN
      1873-4235
      Publisher
      Elsevier BV
      Volume
      178
      Pages
      1 - 9
      Language
      English
      Type
      Article
      Item Usage Stats
      65
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      90
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      Abstract
      Whole cell biosensors (WCBs) have become prominent in many fields from environmental analysis to biomedical diagnostics thanks to advanced genetic circuit design principles. Despite increasing demand on cost effective and easy-to-use assessment methods, a considerable amount of WCBs retains certain drawbacks such as long response time, low precision and accuracy. Here, we utilized a neural network-based architecture to improve the features of WCBs and engineered a gold sensing WCB which has a long response time (18 h). Two Long-Short Term-Memory (LSTM)-based networks were integrated to assess both ON/OFF and concentration dependent states of the sensor output, respectively. We demonstrated that binary (ON/OFF) network was able to distinguish between ON/OFF states as early as 30 min with 78% accuracy and over 98% in 3 h. Furthermore, when analyzed in analog manner, we demonstrated that network can classify the raw fluorescence data into pre-defined analyte concentration groups with high precision (82%) in 3 h. This approach can be applied to a wide range of WCBs and improve rapidness, simplicity and accuracy which are the main challenges in synthetic biology enabled biosensing.
      Keywords
      Synthetic biology
      Whole-cell biosensors
      Living sensors
      Neural networks
      Machine learning
      Permalink
      http://hdl.handle.net/11693/77668
      Published Version (Please cite this version)
      https://doi.org/10.1016/j.bios.2021.113028
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      • Department of Computer Engineering 1561
      • Institute of Materials Science and Nanotechnology (UNAM) 2256
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