Smartphone-based platforms implementing microfluidic detection with image-based artificial intelligence
Bangfeng Wang,Yiwei Li,Mengfan Zhou,Yulong Han,Mingyu Zhang,Zhaolong Gao,Zetai Liu,Peng Chen,Wei Du,Jing Zhang,Xiao Jun Feng,Bi-Feng Liu +11 more
TL;DR: In this article , the authors summarize recent progress in mobile health platforms, including the aspects of microfluidic chips, imaging modalities, supporting components, and the development of software algorithms.
read more
Abstract: The frequent outbreak of global infectious diseases has prompted the development of rapid and effective diagnostic tools for the early screening of potential patients in point-of-care testing scenarios. With advances in mobile computing power and microfluidic technology, the smartphone-based mobile health platform has drawn significant attention from researchers developing point-of-care testing devices that integrate microfluidic optical detection with artificial intelligence analysis. In this article, we summarize recent progress in these mobile health platforms, including the aspects of microfluidic chips, imaging modalities, supporting components, and the development of software algorithms. We document the application of mobile health platforms in terms of the detection objects, including molecules, viruses, cells, and parasites. Finally, we discuss the prospects for future development of mobile health platforms.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Plant exosome nanovesicles (PENs): green delivery platforms.
TL;DR: This review provides new ideas and methods for future research on plant exosomes, including their empowerment by artificial intelligence and gene editing, as well as their potential application in the biomedicine, food, and agriculture industries.
50
Nature-inspired micropatterns
Yunhua Wang,Guoxia Zheng,Nan Jiang,Guoliang Ying,Yiwei Li,Xiaolu Cai,Jiashen Meng,Liqiang Mai,Ming Guo,Yu Shrike Zhang,Xingcai Zhang +10 more
38
Recent advances in point-of-care testing of COVID-19.
Sungwoon Lee,Liyan Bi,Hao Chen,Dong Lin,Rongchao Mei,Yixuan Wu,Lingxin Chen,S. Joo,Jaebum Choo +8 more
TL;DR: Next-generation pandemic sensing methods incorporating artificial intelligence that can be used to meet global health needs in the future are introduced and appropriate responses of various testing devices to emerging infectious diseases and prospective preventive measures for the post-pandemic era are discussed.
33
Role of Machine Learning Assisted Biosensors in Point-of-Care-Testing For Clinical Decisions
Manish Bhaiyya,Debdatta Panigrahi,Prakash Rewatkar,Hossam Haick +3 more
TL;DR: This study reviews the integration of Machine Learning (ML) into biosensors for Point-of-Care-Testing (PoCT), enhancing diagnostic accuracy, sensitivity, and speed through ML algorithms, and explores applications in various healthcare contexts, including electrochemical and wearable sensors.
23
Artificial Intelligence−Powered Electrochemical Sensor: Recent Advances, Challenges, and Prospects
Siti Nur Ashakirin Binti Mohd Nashruddin,Faridah Hani Mohamed Salleh,Rozan Mohamad Yunus,Halimah Badioze Zaman +3 more
TL;DR: This paper reviews recent advances in AI-powered electrochemical sensors, highlighting their potential for real-time disease detection and personalized healthcare, while also discussing challenges such as data privacy, sensor stability, and algorithmic bias.
19
References
Clinically Applicable AI System for Accurate Diagnosis, Quantitative Measurements, and Prognosis of COVID-19 Pneumonia Using Computed Tomography
Kang Zhang,Xiaohong Liu,Jun Shen,Zhihua Liu,Ye Sang,Xing-yue Wu,Yunfei Zha,Ke Wang,Zhongguo Zhou,Jian Wang,Zehong Yang,Jie Xu,Lei Yang,Shaoxu Wu,Wei Zhang,Lianghong Zheng,Xuan Zhang,Li Wang,Liu-can Lu,Jiaming Li,Haiping Yin,Winston Wang,Oulan Li,Charlotte L. Zhang,Tao Wu,Ruiyun Deng,Kang Wei,Yong Zhou,Johnson Y.N. Lau,Manson Fok,Jianxing He,Weimin Li,Guangyu Wang +32 more
TL;DR: Using a large computed Tomography database from 4,154 patients, an AI system is developed that can diagnose NCP and differentiate it from other common pneumonia and normal controls and is made available globally to assist the clinicians to combat COVID-19.
Machine-learning micropattern manufacturing
Si Wang,Ziao Shen,Zhenyu Shen,Yuanjun Dong,Yanran Li,Yuxin Cao,Yanmei Zhang,Shengshi Guo,Jianwei Shuai,Yun Yang,Changjian Lin,Xun Chen,Xingcai Zhang,Xingcai Zhang,Qiaoling Huang +14 more
TL;DR: Results indicate that machine learning algorithms are effective in accelerating materials manufacture and optimization and silver nanoparticle doping demonstrates that large-scale TNMs are effective platforms for high-throughput screening.
Digital diffraction analysis enables low-cost molecular diagnostics on a smartphone
Hyungsoon Im,Cesar M. Castro,Huilin Shao,Monty Liong,Jun S. Song,Divya Pathania,Lioubov Fexon,Changwook Min,Maria Avila-Wallace,Omar Zurkiya,Junsung Rho,Brady Magaoay,Rosemary H. Tambouret,Misha Pivovarov,Ralph Weissleder,Hakho Lee +15 more
TL;DR: The D3 (digital diffraction diagnosis) system uses microbeads to generate unique diffraction patterns which can be acquired by smartphones and processed by a remote server and could enable medical diagnostics in geographically and/or socioeconomically limited settings with pathology bottlenecks.
NFC-enabling smartphone-based portable amperometric immunosensor for hepatitis B virus detection
Prinjaporn Teengam,Weena Siangproh,Sitt Tontisirin,Amorn Jiraseree-amornkun,Natthaya Chuaypen,Pisit Tangkijvanich,Charles S. Henry,Nattaya Ngamrojanavanich,Orawon Chailapakul +8 more
TL;DR: In this paper, a smartphone-controlled electrochemical sensor operated entirely via Near Field Communication (NFC) was used to create a simple label-free immunoassay for detecting Hepatitis B Virus (HBV).
Emerging porous organic polymers for biomedical applications
01 Jan 2022
TL;DR: Porous organic polymers (POPs) have emerged as a new class of multifunctional porous materials and have received tremendous research attention from both academia and industry as mentioned in this paper .