Mobile QR Code QR CODE




Medical intelligent sensors, Raman spectroscopy, Non destructive testing, Medical field, Laser ultrasonic testing

1. Introduction

Sensors can convert various external data parameters such as physics, chemistry, and mechanics into certain expressions, making them an important tool for information transmission and acquisition [1]. Most medical testing instruments are centered around various sensors. Considering the particularity of medical examinations, medical sensors need to have higher accuracy, reliability, and anti-interference capabilities. At the same time, they also have high requirements in various characteristics such as volume, weight, quality, and service life [2]. With the rapid development of information technology, Internet of Things technology, and sensor technology, medical sensors have made revolutionary progress. Intelligent sensors have not only undergone changes in external devices in the medical field, but also have new research results in their internal definitions [3]. The increasing demand for medical sensors has become an important constraint on the development of medical sensors. How to fully save, output, and store the transmitted data during patient testing is an important direction for the development of medical intelligent sensors [4]. The functions of intelligent sensors need to include self compensation and self diagnosis. Through microprocessor algorithms, the output status of the sensor can be checked and the diagnostic results can be directly presented. The information storage and memory functions are also important ways for doctors to query historical data and necessary parameters. In addition, self-learning and adaptive functions can be achieved through microprocessors embedded with advanced programming capabilities [5]. In the work process, according to certain behavioral criteria, component parameter sequences are adapted to the medical detection process, providing assistance for the accuracy of medical detection results [6].

From this, it can be seen that medical sensors are an important branch in the biomedical field and one of the core components of various medical devices, which can represent the process and effectiveness of the current high-level development of medical equipment [7]. With the continuous improvement of intelligent sensor technology, medical intelligent sensors have entered a new stage of rapid development, and have also made certain innovative breakthroughs in this field. Medical intelligent sensors can replace and extend, enhancing the sensory organs of doctors during the diagnostic process [8]. With the rapid development of microelectronics, wireless sensing technology, new nanomaterials, and non-destructive testing technology, the field of medical sensors has faced new challenges and opportunities. More and more researchers are paying attention to more sensitive, precise, and responsive medical sensor devices [9]. In practical medical testing, the loss of data transmission can easily reduce the accuracy of detection results. Due to the high quality requirements of medical detection data, conventional detection parameters and methods are difficult to meet the needs of intelligent sensors. Therefore, the combination of non-destructive testing technology and intelligent medical sensors is becoming increasingly widespread. It can use advanced technology and testing methods to develop testing results towards higher accuracy, intelligence, and informatization without damaging the testing results. At present, non-destructive testing technology has been widely applied in various fields such as aviation, transportation, industry, and medicine [10]. In our research on the optimization of non-destructive testing technology for medical intelligent sensors, we should focus more on exploring the development and current status of non-destructive testing technology, selecting suitable methods from various testing methods in the medical field, and improving the reliability of testing results.

2. Development Status of Non-destructive Testing Technology in Various Countries

With the progress of science, technology, and society, modern medicine has increasingly high requirements for data management methods and detection results. People have found that in the conventional detection process, parameter results and detection instruments are no longer able to meet the needs of modern technology, from ordinary single parameter data to multi parameter dynamic data [11]. When using automatic detection technology for data state estimation, it is difficult to determine whether the accuracy of the detection data can be above the standard coefficient [12]. This situation has become an important obstacle in the current development process of the detection field. The current detection technology has higher requirements for damage rate, and non-destructive effects have also achieved certain results in various fields [13]. It can use physical or chemical methods, combined with advanced technological equipment, to analyze the internal structure, surface composition, and characteristic state of the tested object without compromising the data results. So, non-destructive testing technology is developing towards intelligence, low radiation, informatization, and diversification [14]. Domestic scholars have applied non-destructive testing technology in industries such as industry and power, achieving resource sharing and data complementarity, enabling the comprehensive and coordinated development of the industrial industry. This not only promotes technological progress, but also increases economic benefits.

At present, there are many styles of non-destructive testing methods, and the use of feedback data from ultrasonic and radiographic testing has certain reference value in various fields [15]. Foreign researchers have applied these technologies in food safety and non-destructive testing of product quality, while also playing a huge role in the medical industry. Japanese scholars have found that non-destructive testing technology can assist in medical diagnosis, such as improving the imaging effect of medical images in X-ray fluoroscopy [16]. The improved accuracy of data results such as CT, MRI, and ultrasound can also assist in the treatment of certain diseases, such as radiotherapy and chemotherapy, which have certain advantages. Radiographic non-destructive testing refers to the complex interaction between radiation and the internal structure of the object being tested when it passes through it. Attenuate the transmission intensity, contrast the defect area with the non defect area, and detect the internal problems of the object by analyzing the radiation intensity. Reuse its wavelength change and energy consumption to achieve the effect of photoelectric detection. This non-destructive testing technology can not only visually determine the size and location of internal defects, but also determine the specific positioning range, thereby helping doctors quickly determine the location of the disease and carry out targeted treatment [17]. However, long-term experiments by foreign researchers have shown that excessive radiation non-destructive testing can lead to a decrease in the patient's immune system and trigger other diseases. Therefore, non-destructive testing technology has been continuously optimized and improved in the medical field. American researchers have found that ultrasonic non-destructive testing, which uses ultrasound to examine the tested object and then displays it with ultrasound testing instruments, can achieve certain results and improve the defects of radiographic non-destructive testing [18]. By using high-frequency ultrasound to reflect in different heterogeneous interfaces, the reflection results are fed back to the doctor. In other words, when encountering internal defect problems, some of the reflected energy returns to the sensor medium along the pathway. Sensors output electrochemical signals in another way, providing the displayed results directly to doctors for reference. Ultrasonic waves propagate in the tested object, and due to changes in acoustic characteristics and internal organization, phenomena such as reflection and transmission occur [19,20]. The accuracy of its research results will also be affected to varying degrees, so more exploration and innovation are needed to optimize the non-destructive testing process of medical intelligent sensor technology.

3. Research on Non-destructive Testing Technology based on Medical Intelligent Sensor Technology

3.1 Medical Intelligent Microsensor Technology

The concept of intelligent sensors was first proposed in the aviation industry in the United States and was developed into a product in the 1970s. They refer to the integrated sensor that provides control or sensing data to be tested as an intelligent sensor, and believe that this sensor device carries a microprocessor and has various functions such as information detection, memory, storage, and logical judgment. Until now, it has been widely believed that intelligent sensor technology can automatically collect information from the external environment, and can process and judge data, with certain self diagnosis and adaptive capabilities. Medical intelligent sensor technology mainly consists of sensor microprocessors, input/output circuits, and various data software. Its structure is shown in Fig. 1:

From Fig. 1, it can be seen that the sensor is divided into two parts: pre-processing and post-processing. The data is transmitted into the sensor according to the tested object, and then the sensor equipment processes the signal, converting it into a circuit or other representation. After connecting to the output interface, the data output is displayed. In addition, the sensor also needs to be connected to the software part to prepare for data input and perform preprocessing adjustments, selection, etc. The concept of medical intelligent sensors has greatly extended compared to traditional ordinary sensors. It fully utilizes the computing and storage capabilities of computers, which can make the data information collected during the testing process more complete. Traditional sensors are only a component of intelligent sensors, which only perform the function of obtaining data from the tested object and have no other characteristics. Medical intelligent sensor technology converts physical quantities during the testing process into corresponding electrical signals, which are then transmitted to signal processing circuits. The signals are filtered, amplified, and analog-to-digital converted before being added to computer microprocessing calculations. This micro sensor technology is also a core component of intelligent sensors, which not only manages and stores data, but also adjusts the medical detection process through feedback loops. We compared and explored the frequency changes of medical intelligent sensor technology research in different countries in recent years through literature review data:

Fig. 1. Structural diagram of medical intelligent sensors.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig1.png
Fig. 2. Research frequency of medical intelligent sensor technology in different countries.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig2.png

From Fig. 2, it can be seen that developed countries such as the United States and Japan started researching medical intelligent sensor technology earlier, and there have been relatively many related literature studies [21]. With the rapid development of electronic technology, computer technology, and sensor technology in recent years, research on medical intelligent sensor technology has become increasingly mature. At the same time, the increasing popularity of portable intelligent wearable devices worldwide has also brought about significant changes in medical sensor technology. Traditional sensors are relatively weak in terms of extensibility, comfort, and adaptability based on metal and semiconductor materials. In the later stage, the advantages of high convenience, high sensitivity, and high response speed brought by micro sensor technology have become a hot research topic in the medical field. In terms of blood oxygen detection, invasive testing brings increasingly serious trauma to patients, and the operation is complex and difficult to achieve real-time monitoring. Now it has gradually been replaced by non-invasive testing. Checking the patient's blood oxygen saturation and total hemoglobin is the main physiological parameter for judging whether the human respiration is normal, and its expression formula is as follows:

(1)
$ SPO_{2}=\frac{HbO_{2}}{HbO_{2}+Hb+CoHb} \\ $
(2)
$ (H_{1}+MetHb)\times 100\% =S_{2} $

With the increasing demand for accuracy and efficiency in blood oxygen detection in medical clinical practice, the use of non-destructive testing technology to improve the detection effect of medical intelligent sensors has become the main development trend. The main structure of the sensor equipment with micro computing elements added in our experiment is composed of a red ray and near-infrared printed sensor array. Place a photodiode array at the top of the device to display waveform data. The working principle is to use the difference in molar extinction coefficient between spectra for comparison and measurement, and to improve the propagation effect of Beer's law in blood oxygen measurement by combining red light with any other two combinations. The expression is as follows:

(3)
$ Y(\lambda )=I_{0}(\lambda )e-\mu ^{(\lambda )d\times DPF} \\ $
(4)
$ \delta Hb/\in HbO_{2}<2 $

In the formula $Y(\lambda )$ as the reflection intensity coefficient received by the sensor,$I_{0}$ for the intensity of input light,$\mu $ is the absorption coefficient. The expression result represents the difference between the light absorbed and reflected by the miniature medical intelligent sensor during operation. The research in this article mainly focuses on the automatic perception of patient sign data and health index by medical intelligent sensors in the design. Monitor human electrocardiogram, body temperature, body posture, and other processes, and transmit these perception information to intelligent terminals through wireless transmission. After data collection and analysis, upload it to the hospital database through the internet.

3.2 Research on Raman Spectroscopy Non-destructive Testing based on Medical Intelligent Sensor Technology

After literature review, it was found that non-destructive testing technology has many applications in the medical field. Traditional radiographic testing methods only rely on the complex interaction between radiation and material atoms, and determine the defect location by judging the degree of attenuation of radiation intensity. This method can not only perform medical diagnosis, but also carry information on the distribution of various human densities, and receive data through sensors for display and pathological diagnosis. In addition, X-ray non-destructive testing also has good effects in treatment, judging changes in human cell and tissue based on biological effects, causing damage or inhibition of irradiated cell and tissue, thereby achieving disease control. On the other hand, it causes significant damage to the normal body of the human body and is not suitable for multiple examinations and treatments in a short period of time. CT scanning is a non-destructive testing method optimized based on radiographic testing technology. After converting the radiation into visible light, it undergoes digital to analog conversion through electrical signals, and finally inputs it into a computer for processing, displaying human body information on the image screen.

It commonly uses cross-sectional images to reflect the degree of radiation absorption by organs and tissues in different grayscales. Due to the high resolution of CT detection and the ability to produce specific imaging data, it is currently widely used in clinical practice. However, this detection method is expensive and the equipment is also quite expensive, so it also has certain limitations and should not be used as a routine diagnostic method. Ultrasound non-destructive testing technology has also gained a wide coverage in medical applications, known as ultrasound diagnostics. Observe the reflection of ultrasound by the human body, and finally perform image processing to understand the internal situation of the tested object. It has low intensity and high frequency, and although it does not cause significant damage to the human body, there is a certain feedback delay. We compared the superiority of the three non-destructive testing techniques mentioned above in medicine, as shown in Fig. 3:

Fig. 3. Comparison of the advantages and disadvantages of three non-destructive testing techniques.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig3.png

From Fig. 3, it can be seen that the ultrasound diagnostic method has high superiority, and its principle is to use pulse echo to complete the imaging process. After the human body emits a set of ultrasound waves, it scans in a certain direction [22]. However, during the experiment, we also found that the delay of ultrasound non-destructive testing has a significant obstacle for doctors to judge the actual situation of patients. Raman spectroscopy non-destructive testing technology, as a comprehensive technology developed on the basis of modern computer, electronics, and sensor technology, can provide fast, simple, and repeatable non-destructive quantitative analysis. This method has a higher transmittance and a clearer and sharper peak in data response, making it more suitable for medical use. We will use Raman spectroscopy technology to perform diffusion testing on cancer patients in subsequent experimental tests. When the ion motion direction in the spectrum exhibits an axisymmetric mode propagation pattern, the change in spectral frequency also changes accordingly. The relative velocity and detection point group velocity are important concepts in propagation data, and the formula is as follows:

(5)
$ C_{p}=\eta f=\frac{w}{k} $

In the formula $C_{p}$ as a relative wavelength velocity, the population velocity of the test point has a certain characteristic, such as the expression relationship between the energy propagation of the wave group and the relative velocity at the maximum peak value, as follows:

(6)
$ G_{t}=G_{p}+k\frac{dC_{p}}{dk} $

Our most intuitive consideration for explaining the concept of spectral data transmission speed is that the frequency varies under different amplitudes.

Fig. 4. Changes in absorbance wavelength and resonance peaks in Raman spectroscopy.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig4.png

As shown in Fig. 4, the measurement results of spectral data provide important basis for the key parameters of Raman spectroscopy imaging detection sensing devices. In general, Raman spectroscopy uses visible light as the excitation source to improve the spectral signal efficiency. The position of the characteristic peak spectrum also shows the distribution range of diseased cells in cancer patients, which cannot be provided by conventional spectral detection methods.

After overlapping two sets of harmonic spectra, form a combination formula:

(7)
$ u(x,t)=A\cos (o_{1}x-w_{1}t)+A\cos (K_{2}x-w_{2}t) \\ $
(8)
$ k_{1}=\frac{w_{1}}{c_{1}} \\ $
(9)
$ k_{2}=\frac{F_{2}}{c_{2}} $

Wherein $A$ for amplitude,$k_{1}$,$k_{2}$ represent two wave values with different values. According to the sum difference product formula, the function value of the measured data can be combined with the sum difference result to obtain the following formula:

(10)
$ u(x,t)=2A\cos \left\{\frac{1}{2}(k_{1}-k_{2})x-\frac{1}{2}(w_{1}-w_{2})t\right\} \\ $
(11)
$ u=\left\{(\frac{1}{2}kx-\frac{1}{2}w)t\right\} $

Transform all the above formula functions:

(12)
$ \Delta w=\frac{1}{2}(w_{1}-w_{2}) \\ $
(13)
$ \Delta k=\frac{1}{2}(k_{1}-k_{2}) $
(14)
$w_{n}=\frac{1}{2}(w+k)_{n}$

The transformed formulas are combined into the following expression:

(15)
$ u\left(x,t\right)=2A\cos \left(\Delta kx-\Delta wt\right)\cos \left(kx-wt\right) $

The low-frequency and high-frequency propagation data of Raman spectroscopy can be processed by binarization threshold after being collected through imaging technology to obtain corresponding images.

4. Analysis of Research Results on Non-destructive Testing Technology based on Medical Intelligent Sensor Technology

4.1 Results Analysis

With the increasing challenges faced by the medical field in the development of new technologies, sensor research based on the medical Internet of Things has become a core part of intelligent vital sign monitoring and medical detection. Medical intelligent sensors use the method of wireless transmission of data information to divide the vital feature data of the monitored object in the perception layer, effectively collecting characteristic information such as body temperature, posture, electrocardiogram and blood pressure. When a patient experiences abnormal detection conditions, an alarm is issued through the intelligent monitoring system, and positioning marks are made during the detection, allowing medical staff to analyze and treat the pathology in the shortest possible time. We mainly combine embedded micro sensor components in our research to optimize medical intelligent sensor devices into more precise and compact forms. By combining various functions such as self compensation, self calibration, and self diagnostic data processing, it can ensure a certain level of transmission accuracy and reliability when facing large amounts of data transmission and real-time requirements.

As shown in Fig. 5, the sensor is mainly composed of various components such as microprocessors, power supplies, detection systems, indicator guidance, and wireless communication. The wireless sensor in Fig. 5 does not use I2C bus for communication, but instead uses wireless communication technology. This design enables sensors to be more easily deployed in the required locations without considering the complexity of wiring, while also improving the flexibility and scalability of the system. Adopting a micro structure design and exquisite appearance, the power supply is combined with a single pressure switch charging method, and energy-saving light sources are used for indirect lighting reminders. In addition, sensors can also transmit data over a certain communication distance, with a transmission speed of over 1Mbps. Up to 12 smart terminals can be logged in, and if no connection is established within one minute, it will enter sleep mode. When conducting non-destructive testing on patients, in addition to analyzing data on electrocardiogram, body temperature, and posture, those data can also be sampled and stored in a per second format. The internal temperature sensing has high accuracy and sensitivity, and can sense temperatures from -10 $^{\circ}$C to 57 $^{\circ}$C. Combined with an electrocardiogram perception simulator, it is displayed on an integrated screen using digital data processing, analog-to-digital conversion, and other methods. In the above study, we mainly compared the results of the patient's blood oxygen content test with the optimized medical intelligent sensor technology's molar extinction coefficient, and displayed the data as follows:

Fig. 5. Principles of Medical Intelligent Microsensors.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig5.png
Fig. 6. Change in molar extinction coefficient.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig6.png

As shown in Fig. 6, we represent the different components of blood oxygen content with three different types of light. Green light represents the wavelength of blood oxygen content in the patient's body, red light represents the reflection wavelength of hemoglobin inside the blood, and orange represents the reflection wavelength of blood cells. Through the comparison of non-destructive data before and after, it was found that the medical intelligent micro sensor technology used in this experiment has a relatively small amount of data damage and can basically reach a non-destructive state. On the left or top of Fig. 6, label one or more light source points that emit specific wavelengths of light (such as green, red, and orange light) corresponding to the detection of blood oxygen content, hemoglobin, and blood cells, respectively. The light source should include LED lights or laser sources with tunable or fixed wavelengths, which can accurately control the wavelength of the emitted light to meet the detection needs of different components. The sample should be placed in a transparent or semi transparent container so that light can penetrate and interact with it. The sample can be an actual patient blood sample or simulated tissue.

4.2 Comparison of Application Results

The research objects of biomedical science are biology and humans, and the unique characteristics of the human body often require measurement of different organs and data in medicine to obtain reliable analysis. The different parameters of various organs can easily have various impacts on the detection method during the detection process, so the detection data needs to have high anti-interference ability to meet the needs of medical equipment. Based on these current situations, medical intelligent sensors are more inclined towards large-scale integrated environments, combining the different functions of multiple chips to achieve the transmission and monitoring of various human data. Further improve the miniaturization of medical intelligent sensing equipment, combining computer, electronic, wireless and other technologies. Medical instruments achieve wearable, implantable, and intelligent sensor monitoring. In addition, the input and output methods faced by intelligent sensor technology in practical applications can also cause data damage, while being limited by distance and other factors. Therefore, in the optimization of medical intelligent sensors, this article adds networked service functions to the input and output links, protecting the transmission integrity of underlying data through the connection of multiple nodes. In the above experiment, we used Raman spectroscopy technology to perform non-destructive testing on patients, restoring the cellular changes and spectral wavelength peak localization in the patient's body. In addition to being able to reflect in patients with hematological diseases, it also provides effective assistance for pathological analysis of cancer patients.

This comprehensive absorption spectrum can clearly distinguish the spectral differences between health and disease. Therefore, we use discrete data graphs to demonstrate the comparison of Raman spectroscopy detection for two types of health and disease:

On the left or top of Fig. 7, label a laser light source, which is a key component for Raman spectroscopy measurement. Laser light sources emit laser beams with good monochromaticity, strong directionality, and high brightness. Usually, near-infrared or visible light wavelengths are selected to avoid damage to biological tissues. The wavelength of the laser should be selected based on the characteristics of the sample being tested to excite the required Raman scattering. The sample stage should be designed to be stable and adjustable for precise control of the interaction position between the sample and the laser beam. For biological samples, it may be necessary to maintain certain temperature and humidity conditions. As shown in Fig. 7, the internal absorption spectrum of healthy individuals is relatively complete, while there are obvious defects in the internal absorption spectrum of diseased individuals. The experimental operation is simple, and in practical applications, results can be obtained within 10 minutes. This technology causes minimal internal damage to the human body and has a lower data loss rate during transmission, truly achieving lossless data transmission. It can help the medical field further achieve results in cell surface analysis and blood research. In addition, the non-destructive testing effect achieved by Raman spectroscopy technology can also directly affect human and biological skin, muscles, organs, soft tissues, and other parts. By analyzing the strong light scattering and absorption spectra of the cortex, a complete spectral imaging image can be obtained. When biological or human tissues undergo lesions, the spectral imaging shows defects and provides effective information for doctors. The tools used for non-destructive testing under this medical intelligent sensor technology are also relatively simple and can meet the common needs of major hospitals. In addition to using a standard short arc lamp source as the light source, controlling the monochromator, scanning instrument, and amplification instrument can form a reference image of spectral absorption in the sensor photoacoustic cell. From this, it can be seen that non-destructive testing technology has truly helped medical intelligent sensor technology to achieve a leapfrog development.

Fig. 7. Raman spectroscopy discrete plot.
../../Resources/ieie/IEIESPC.2024.13.5.452/fig7.png

5. Conclusions

With the rapid development of emerging technologies such as microelectronics, wireless electronics, and sensors, conventional detection methods and instruments are no longer able to meet the needs of the medical field under modern progress. Non destructive testing technology has become the main means of capturing and inspecting the internal state and data of the tested object using more advanced methods without damaging data. This non-destructive testing optimized medical intelligent sensor has the characteristics of small size, low power consumption, high sensing sensitivity, low cost, and strong detection speed and reliability. We analyze the research on non-destructive testing of medical intelligent sensor technology based on this development status. Firstly, we investigate and elaborate on the promotion of medical intelligent sensor technology in the medical field. Due to the complex internal structure and strong exclusivity of the human body, many detection methods are prone to potential harm to the human body. How to optimize medical intelligent sensor technology has become the focus of our research. This article also combines micro high-speed data acquisition sensing elements to simplify the composition and structure of traditional sensor devices, and improves the stability of performance without affecting data transmission and work efficiency. Secondly, through the analysis of Raman spectroscopy non-destructive testing technology, the non-destructive testing images of human blood and cancer pathology analysis were determined. Use photometry to obtain the absorption wavelength change curve and mark the range of resonance spectrum peak position. Finally, using Raman spectroscopy non-destructive testing technology, the internal detection data of healthy and diseased human bodies were collected, and the experimental results were judged based on spectral imaging images. The research results indicate that the research on non-destructive testing technology based on medical intelligent sensor technology can provide reliable basis for doctors to judge data information, and has certain medical and economic value.

Funding

This work was supported by the Shanxi Pharmaceutical Vocational College Foundation(2023222).

REFERENCES

1 
Javaid S, Zeadally S, Fahim H, et al. Medical sensors and their integration in wireless body area networks for pervasive healthcare delivery: A review. IEEE Sensors Journal, 2022, 22(5): 3860-3877.DOI
2 
Gupta M, Khan M A, Butola R, et al. Advances in applications of Non-Destructive Testing (NDT): A review. Advances in Materials and Processing Technologies, 2022, 8(2): 2286-2307.DOI
3 
Wu R, Zhang H, Yang R, et al. Nondestructive testing for corrosion evaluation of metal under coating. Journal of Sensors, 2021, 2021: 1-16.DOI
4 
Haleem A, Javaid M, Singh R P, et al. Medical 4.0 technologies for healthcare: Features, capabilities, and applications. Internet of Things and Cyber-Physical Systems, 2022, 2: 12-30.DOI
5 
Kakhi K, Alizadehsani R, Kabir H M D, et al. The internet of medical things and artificial intelligence: trends, challenges, and opportunities. Biocybernetics and Biomedical Engineering, 2022, 42(3): 749-771.DOI
6 
Park S H, Choi S, Jhang K Y. Porosity evaluation of additively manufactured components using deep learning-based ultrasonic nondestructive testing. International Journal of Precision Engineering and Manufacturing-Green Technology, 2021: 1-13.DOI
7 
Castro N J, Babakhanova G, Hu J, et al. Nondestructive testing of native and tissue-engineered medical products: adding numbers to pictures. Trends in biotechnology, 2022, 40(2): 194-209.DOI
8 
Zhou W, Wang J, Pan Z, et al. Review on optimization design, failure analysis and non-destructive testing of composite hydrogen storage vessel. International journal of hydrogen energy, 2022, 47(91): 38862-38883.DOI
9 
Balasubramaniam K, Sikdar S, Fiborek P, et al. Ultrasonic guided wave signal based nondestructive testing of a bonded composite structure using piezoelectric transducers. Signals, 2021, 2(1): 13-24.DOI
10 
Ajagbe S A, Awotunde J B, Adesina A O, et al. Internet of medical things (IoMT): applications, challenges, and prospects in a data-driven technology. Intelligent Healthcare: Infrastructure, Algorithms and Management, 2022: 299-319.DOI
11 
Howard J, Murashov V, Cauda E, et al. Advanced sensor technologies and the future of work. American Journal of Industrial Medicine, 2022, 65(1): 3-11.DOI
12 
Kagita M K, Thilakarathne N, Gadekallu T R, et al. A review on security and privacy of internet of medical things. Intelligent internet of things for healthcare and industry, 2022: 171-187.DOI
13 
Liu J, Ji H, Lv X, et al. Laser-induced graphene (LIG)-driven medical sensors for health monitoring and diseases diagnosis. Microchimica Acta, 2022, 189: 1-14.DOI
14 
Chandra M, Kumar K, Thakur P, et al. Digital technologies, healthcare and COVID-19: Insights from developing and emerging nations. Health and Technology, 2022, 12(2): 547-568.DOI
15 
Degerli M, Ozkan Yildirim S. Identifying critical success factors for wearable medical devices: a comprehensive exploration. Universal Access in the Information Society, 2022, 21(1): 121-143.DOI
16 
Sharma A, Singh A, Gupta V, et al. Advancements and future prospects of wearable sensing technology for healthcare applications. Sensors & Diagnostics, 2022, 1(3): 387-404.DOI
17 
Lakhan A, Mohammed M A, Elhoseny M, et al. Blockchain multi-objective optimization approach-enabled secure and cost-efficient scheduling for the Internet of Medical Things (IoMT) in fog-cloud system. Soft Computing, 2022, 26(13): 6429-6442.DOI
18 
Bazulin E G, Evseev I V. Applying plane wave imaging technology in ultrasonic nondestructive testing. Russian Journal of Nondestructive Testing, 2021, 57: 423-436.DOI
19 
Shokrieh M M, Mohammadi A R G. Nondestructive testing (NDT) techniques in the measurement of residual stresses in composite materials: An overview. Residual stresses in composite materials, 2021: 71-109.DOI
20 
Allali I, Belagraa L, Beddar M, et al. Study of the effect of silica fume on the mechanical response of a self compacting concrete using non destructive testing methods (NDT). Academic Journal of Civil Engineering, 2021, 38(2): 180-183.URL
21 
Coccia M, Roshani S, Mosleh M. Scientific developments and new technological trajectories in sensor research. Sensors, 2021, 21(23): 7803.DOI
22 
Wang B, Zhong S, Lee T L, et al. Non-destructive testing and evaluation of composite materials/ structures: A state-of-the-art review. Advances in mechanical engineering, 2020, 12(4), 1687814020913761.DOI
Leping Ma
../../Resources/ieie/IEIESPC.2024.13.5.452/au1.png

Leping Ma was born in Wenshui, Shanxi, China, in 1984. She is currently a lecturer in the Department of Medical Devices at Shanxi Pharmaceutical Vocational College. For many years, she has mainly been engaged in the maintenance and management of medical devices, as well as the teaching management of pharmaceutical equipment application technology. She has made outstanding contributions in professional construction, training room construction, skill guidance, and school enterprise cooperation. Her main research direction is Signal detection and processing.