Lin-Wei Shang's research while affiliated with Nanjing University of Aeronautics & Astronautics and other places

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Publications (7)


Figure 1. Concept of Biolaser Imaging Array with Deep Learning
Monitoring Amyloidogenesis with a 3D Deep-Learning-Guided Biolaser Imaging Array
  • Article

November 2022

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124 Reads

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8 Citations

Nano Letters

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Lin-Wei Shang

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[...]

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Amyloidogenesis is a critical hallmark for many neurodegenerative diseases and drug screening; however, identifying intermediate states of protein aggregates at an earlier stage remains challenging. Herein, we developed a peptide-encapsulated droplet microlaser to monitor the amyloidogenesis process and evaluate the efficacy of anti-amyloid drugs. The lasing wavelength changes accordingly with the amyloid peptide folding behaviors and nanostructure conformations in the droplet resonator. A 3D deep-learning strategy was developed to directly image minute spectral shifts through a far-field camera. By extracting 1D color information and 2D features from the laser images, the progression of the amyloidogenesis process could be monitored using arrays of laser images from microdroplets. The training set, validation set, and test set of the multimodal learning model achieved outstanding classification accuracies of over 95%. This study shows the great potential of deep-learning-empowered peptide microlaser yields for protein misfolding studies and paves the way for new possibilities for high-throughput imaging of cavity biosensing.

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A novel polynomial reconstruction algorithm‐based 1D convolutional neural network used for transfer learning in Raman spectroscopy application

October 2021

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33 Reads

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5 Citations

Journal of Raman Spectroscopy

When a convolutional neural network (CNN) model was built, the size and resolution of its input data were fixed. However, Raman spectra collected by different Raman spectrometers usually had different length, intensity range, and wavenumber interval between two adjacent data points, which made the existing CNN model difficult to be applied to a new Raman spectral data set. Therefore, this paper proposed a polynomial reconstruction algorithm as pretreatment method to obtain reconstructed spectra that would be imported into CNN model with consistent length, intensity range, and wavenumber interval. To test the effectiveness of this method, a big data set with 2563 Raman spectra of 831 minerals and synthetic organic pigments samples was constructed from the RRUFF and SOP database to pretrain a one‐dimensional CNN (1D‐CNN) model. The pretraining results showed that polynomial reconstruction algorithm used as pretreatment method was better than SG smoothing combined spline interpolation algorithm. Then two data sets were collected by different Raman spectrometers for evaluating the transfer learning performance of the trained 1D‐CNN model. Both data sets contained 390 Raman spectra from the same 39 samples of inorganic salts, organic compounds, and amino acids. One was used as calibration data to retrain the 1D‐CNN model, while the other was used as test. Based on data augmentation and 75% calibration data for retraining, the transfer learning performances of 1D‐CNN model were clearly shown in the excellent identification accuracies of 99.58%, 99.32%, and 97.69% for training, validation, and test sets, respectively, which were better than those of K‐nearest neighbor classifier. This paper provides a significant way for the wide application of CNN model in Raman spectroscopy with much more advantages in simplicity and rapidity.


Raman spectroscopic study and identification of multi-period osteoarthritis of canine knee joint
  • Article
  • Publisher preview available

January 2021

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64 Reads

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3 Citations

Applied Physics B

A home-made small-sized Raman spectrometer combined with machine learning algorithms was used to study and identify healthy and multi-period osteoarthritis (OA) canine knee joints. Nine canines were equally divided into three groups according to the post-operative (OA modeling) time of 2-month, 3-month and 7-month. Other two normal canines were used as control. It was found that the degeneration degree of cartilage was positively correlated with post-operative time by doing anatomical analysis. The mixed Raman spectra of cartilage and subchondral bone were collected and analyzed, which reveals subchondral bone demineralization and carbonate ion substituting into the apatite mineral during OA. Raman spectra combined with principal component analysis (PCA) further disclosed that collagen matrix became unordered, both content ratios of amide I/matrix and phenylalanine/matrix in OA cartilage and subchondral bone increased. Based on the PCA getting five principal components, all groups were effectively discriminated by Fisher discriminant analysis (FDA) with high accuracy of 91.07% for the validation set, as well as 95.45% for the test set. It suggests that Raman spectroscopy combined with machine learning is capable to become an effective tool to achieve in situ identification of multi-period OA with high accuracy and preclinical significance.

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Fluorescence imaging and Raman spectroscopy applied for the accurate diagnosis of breast cancer with deep learning algorithms

June 2020

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66 Reads

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39 Citations

Biomedical Optics Express

Biomedical Optics Express

Deep learning is usually combined with a single detection technique in the field of disease diagnosis. This study focused on simultaneously combining deep learning with multiple detection technologies, fluorescence imaging and Raman spectroscopy, for breast cancer diagnosis. A number of fluorescence images and Raman spectra were collected from breast tissue sections of 14 patients. Pseudo-color enhancement algorithm and a convolutional neural network were applied to the fluorescence image processing, so that the discriminant accuracy of test sets, 88.61%, was obtained. Two different BP-neural networks were applied to the Raman spectra that mainly comprised collagen and lipid, so that the discriminant accuracy of 95.33% and 98.67% of test sets were gotten, respectively. Then the discriminant results of fluorescence images and Raman spectra were counted and arranged into a characteristic variable matrix to predict the breast tissue samples with partial least squares (PLS) algorithm. As a result, the predictions of all samples are correct, with minor error of predictive value. This study proves that deep learning algorithms can be applied into multiple diagnostic optics/spectroscopy techniques simultaneously to improve the accuracy in disease diagnosis.


Preliminary study on discrimination of healthy and osteoarthritic articular cartilage of canine by hollow fiber attenuated total reflection Fourier transform infrared spectroscopy and Fisher’s discriminant analysis

June 2020

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10 Reads

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1 Citation

Vibrational Spectroscopy

Submillimetric hollow fiber (HOF-) attenuated total reflection (ATR-) Fourier transform infrared spectroscopy (FTIRS) technique is very suitable for in situ detection of biological samples. HOF-ATR-FTIRS analysis discloses that the significant changes in collagen fiber and proteoglycan between healthy and osteoarthritic (OA) canine specimens. The technique combined with principal component analysis (PCA) and Fisher’s discriminant analysis (FDA) was used to further identify in situ healthy and OA cartilage specimens. The sensitivity of 100% and specificity of 93.6% were obtained for prediction group after all the cases were correctly identified for initial sample, and cross validation was identified with 100% accuracy. The HOF-ATR-FTIRs technique is convenient for operation and suitable for micro-area in situ diagnosis, while the FDA method is fast and accurate. The combination of HOF-ATR-FTIR technique and FDA method can fast realize the micro-area detection and classification of in situ samples with good accuracy, which has potential ability to provide a practical clinical diagnosis of OA.


Anisotropy of bovine nasal cartilage measured by Fourier transform infrared imaging

November 2019

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93 Reads

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2 Citations

Applied Physics B

Fourier transform infrared imaging (FTIRI) can be used to obtain the composition and structure information of sample. Here, FTIRI combined with spectral polarization analysis method was applied to investigate the fine anisotropy of bovine nasal cartilage (BNC). The upper BNC tissue was sliced into a three-dimensional (3D) block with three planes (XY, YZ, and XZ) parallel to horizontal section, forward section, and lateral section, respectively. The anisotropy of collagen fiber in BNC was represented by the absorbance of amide II (1590–1500 cm⁻¹) at different polarization directions. It was found that collagen fiber showed little anisotropy in plane XY, XZ, and along the direction Z in plane YZ. It was more important that collagen fiber showed strong anisotropy along direction Y in plane YZ (transverse axis) of BNC, possibly including arched or wavy fiber orientation even a mixture of both in nasal septum top end. Two anisotropic deflections ranging from 600 to 930 μm and from 2680 to 2980 μm were quantitatively calculated. This study is of important significance for further understanding the physiological structure of nasal septum and provides remarkable experimental support for being a good transplant material in cartilage reshaping studies.

Citations (5)


... These shifts can, for example, result from cellular uptake 9,17 or changes in osmotic pressure 2 , or they can reflect different stages of the cell cycle 32 . Optical sensing with LPs provides a noninvasive option to follow cellular processes in real time, which holds great potential for many applications including disease progression and drug treatment 8,33 . Developing LPs with novel mechanical or chemical properties to achieve more complex sensing mechanisms is an active area of research, and exciting developments include investigating peak splitting to resolve miniscule forces 2 and Foerster resonance energy transfer [34][35][36][37] to detect changes in the chemical environment. ...

Reference:

Hyperspectral confocal imaging for high-throughput readout and analysis of bio-integrated microlasers
Monitoring Amyloidogenesis with a 3D Deep-Learning-Guided Biolaser Imaging Array
  • Citing Article
  • November 2022

Nano Letters

... The convolutional kernel essentially constitutes a weight matrix. The computational formula for the convolutional layer is outlined below [24,25]: ...

A novel polynomial reconstruction algorithm‐based 1D convolutional neural network used for transfer learning in Raman spectroscopy application
  • Citing Article
  • October 2021

Journal of Raman Spectroscopy

... In previous works, the ∼ 10 ps pulses from Nd-doped laser are just compressed to 601 fs and 172 fs by one and two MPCs, respectively. [26,27] There is still a long way toward reaching the few-cycle regime. ...

Raman spectroscopic study and identification of multi-period osteoarthritis of canine knee joint

Applied Physics B

... Fluorescence imaging is a non-invasive and non-toxic imaging method used to visualize biological molecules and processes using fluorescent dyes or proteins as markers. Fluorescence imaging is in fact fast and frequently utilised for identification of biological samples procedures [17,18]. Modern labs frequently use fluorescence microscopy to examine, locate, and monitor individual fluorescing particles [19]. ...

Fluorescence imaging and Raman spectroscopy applied for the accurate diagnosis of breast cancer with deep learning algorithms
Biomedical Optics Express

Biomedical Optics Express

... 1). 25,57,58 However, it has been shown multiple times that it is absorptance (α = 1 − T − R), which exhibits this cos 2 μ relationship. 59,60 Additionally, this relationship only factors in the angle between TDM and electric field vector in the yz-plane (Fig. 1). ...

Anisotropy of bovine nasal cartilage measured by Fourier transform infrared imaging

Applied Physics B