399
Views
0
CrossRef citations to date
0
Altmetric
Commentary

Nanopore sensing and machine learning: future of biomarker analysis and disease detection

ORCID Icon, ORCID Icon, ORCID Icon & ORCID Icon
Article: 2340882 | Received 05 Oct 2023, Accepted 17 Oct 2023, Published online: 05 Jan 2024

References

  • Taniguchi M, Minami S, Ono C et al. Combining machine learning and nanopore construction creates an artificial intelligence nanopore for coronavirus detection. Nat Commun. 12(1), 3726 (2021).
  • Arima A, Tsutsui M, Washio T, Baba Y, Kawai T. Solid-State Nanopore Platform Integrated with Machine Learning for Digital Diagnosis of Virus Infection. Anal. Chem. 93(1), 215–227 (2021).
  • Arima A, Tsutsui M, Harlisa IH et al. Selective detections of single-viruses using solid-state nanopores. Sci Rep. 8(1), 16305 (2018).
  • Wan YK, Hendra C, Pratanwanich PN, Göke J. Beyond sequencing: machine learning algorithms extract biology hidden in Nanopore signal data. Trends Genet. S0168952521002572 (2021). doi: 10.1016/j.tig.2021.09.001
  • Jena MK, Pathak B. Development of an Artificially Intelligent Nanopore for High-Throughput DNA Sequencing with a Machine-Learning-Aided Quantum-Tunneling Approach. Nano Lett. 23(7), 2511–2521 (2023).
  • Dutt S, Shao H, Karawdeniya B et al. High Accuracy Protein Identification: Fusion od Solid-State Nanopore Sensing and Machine Learning. Small Methods. 2300676 (2023).
  • Hammer GD, McPhee SJ. Pathophysiology of Disease: An Introduction to Clinical Medicine. 8th ed. McGraw-Hill Education, NY, USA (2018).
  • Dutt S, Karawdeniya BI, Bandara YMNDY, Afrin N, Kluth P. Ultrathin, High-Lifetime Silicon Nitride Membranes for Nanopore Sensing. Anal. Chem. 95(13), 5754–5763 (2023).
  • Lin C-Y, Fotis R, Xia Z et al. Ultrafast Polymer Dynamics through a Nanopore. Nano Lett. 22(21), 8719–8727 (2022).