Welcome to the Industrial Automation website!

NameDescriptionContent
HONG  KANG
E-mail  
Password  
  
Forgot password?
  Register
当前位置:

How does Life science move towards AI4S Era?

来源: | 作者:佚名 | 发布时间 :2023-12-07 | 389 次浏览: | 🔊 Click to read aloud ❚❚ | Share:

In the field of genomics, through machine learning and statistical models, researchers have successfully predicted important biological processes such as the function of encoded proteins in the genome, gene shear events, and regulatory networks, providing a huge data resource for biological science research.

Under the new paradigm of AI4S, the pre-trained model shows unprecedented capabilities, but for specific scientific data and information, it also needs to deeply combine the underlying characteristics of the discipline, and use its special "language" as a carrier, such as protein sequence and nucleic acid sequence in life science, which is different from natural language to carry information.

In RNA drug design, researchers urgently need a computational tool that can efficiently and comprehensively explore and describe the RNA space in order to achieve digital innovation in RNA research. Uni-RNA developed by Deep potential technology came into being. According to Wen Han, head of macromolecular research and development of Deep Potential Technology, Uni-RNA uses about 1 billion high-quality RNA sequences for large-scale pre-training, covering almost all RNA space, and fully mining the potential information of RNA sequences. By fine-tuning the model in a wide range of downstream tasks, Uni-RNA achieved leading results (SOTA) in all seven major tasks in the three RNA domains: RNA structure prediction, mRNA sequence property prediction, and RNA function prediction, opening up endless possibilities for future in-depth research in the RNA field.

"Al for Life Sciences", a new paradigm that combines AI capabilities with underlying biological mechanisms, is injecting new vitality into the entire industry from the perspective of underlying technological breakthroughs, and its systematic development is expected to bring more possibilities to the industry.

Finding neoantigens is the core of personalized cancer immunotherapy. However, using traditional experimental methods to find precise recognition of T-cell-bound Peptides on the cell surface and then validate the "immunogenicity" is still a costly and time-consuming way. Li Ming, a fellow of the Royal Society of Canada and a professor at the University of Waterloo in Canada, said, "The specificity of neoantigens between individuals is extremely high, and it is difficult to get an accurate match in the general protein or peptide database, so de novo sequencing technology without a database reference requires a high degree of accuracy, and an efficient method is urgently needed to verify the neoantigens." The introduction of deep learning methods and the development of "neoantigen de novo sequencing" methods have brought new opportunities. Simulating the human central tolerance system to solve the problem of no TCR in immunogenicity prediction, using deep learning technology, the detection accuracy and efficiency of neoantigens are greatly improved. In the field of life sciences, artificial intelligence helps promote the combination of "wet experiments" and "dry experiments" to promote the landing and universal benefit of personalized cancer immunotherapy."

The use of AI technology for data analysis, model construction and prediction, as well as the development of computational tools, all demonstrate the great potential and broad application space of AI4S in the field of life sciences.

Zhang Dan, associate professor at Central China Normal University, said that "iron death" is a programmed way of cell death that is different from apoptosis, necrosis and autophagy. Catalase (CAT) is expected to be a new target to induce iron death in tumor cells, and the key to achieve this goal is to design and synthesize highly active CAT inhibitors. The results of animal experiments showed that BT-Br could effectively inhibit tumor growth in CRPC mice. This study suggests that CAT has the potential to be a new target for the treatment of CRPC based on iron death induction strategies. This set of processes can be applied to the field of plants for weeding or fighting fungal diseases, which is also the result of the application of artificial intelligence technology to the laboratory from calculation to synthesis, to molecular biology experiments and animal and plant experiments.

Today, the new paradigm of AI for Science has provided strong support for the field of life science and greatly promoted the innovation and development of the field of life science. With the continuous progress of AI technology, future life science research will be more intelligent and efficient, bringing more hope for human health and well-being.

On August 10-11, the 2023 Science Intelligence Summit was successfully held in Beijing. As a series of activities of the Zhongguancun Forum, the 2023 Science Intelligence Summit is hosted by the Beijing Institute of Science Intelligence, aiming to build a co-creation platform for scientific research breakthroughs, technology cultivation and talent exchange in the field of AI for Science. The summit set up a main forum and 10 thematic academic summits, covering topics such as model algorithms, databases, energy materials, and computing engines. At the meeting, participating academicians, experts and business representatives shared advanced ideas and cutting-edge insights, presented research results and innovative technologies, and looked forward to the future development trend of AI for Science.

  • OEMAX NX-CPU700P PLC Controller
  • OEMAX NX-BASE10 PLC Backplane
  • OEMAX NX-AO4C 4-Channel Analog Output Module
  • OEMAX NX-AI8C 8-Channel Analog Input Module
  • OMACO GF0-57CQD-002 Industrial Control Module Precision Automation
  • OPTIMATE OP-620 Industrial Automation Control Module
  • OPTIMATE OM1510 Industrial Control Module Performance Solution
  • OPTO 22 SNAP-IDC5D Digital Input Module for Automation
  • OPTO 22 SNAP-AITM-2 Thermocouple Module
  • ORIENTAL A4722-9215KM Cooling Fan
  • ORIENTAL MOTOR 2GK180K Gearhead Specifications
  • OSRAM DULUX L 36W 840 865 Lamp Specification
  • OTHER FLASH SERIES 2 Memory Module Data
  • OVATION 1X00458H01 Control Module Specification
  • Emerson Ovation 1C31157G02 Event Sequence Module
  • Emerson Ovation 5X00070G04 Analog Input Module
  • OXIDE 0020-31655 Industrial Controller
  • ABB FAU810 C87-11006 / C10-12010 Flame Analyzer
  • Pilz PSSu E F 4DI Safety Input Module
  • Pepperl+Fuchs KFD2-UFC-1.D Frequency Converter
  • Pacific Scientific VDE0530-S1 Stepper Motor
  • Pacific Scientific 6410-001-N-N-N Stepper Drive
  • PACIFIC LA23GCKC-1Y Servo Motor Reliable Automation Motion Solution
  • PACIFIC LA23GCKX-P500A Servo Motor Advanced Industrial Motion Control
  • PACIFIC LA23GCKC-P500A High Precision Servo Motor for Industrial Automation
  • Pacific Scientific E32NCHA-LNN-NS-00 Hybrid Stepper Motor
  • Pacific Scientific SCE903A3-002-01 Servo Drive
  • Pacific Scientific 6410-024-N-N-N Stepper Motor Drive
  • PALCLEAN JD-BXG Industrial Control Module
  • Panametrics 704-673-20 Ultrasonic Flow Meter
  • Panasonic MSD043A1XX AC Servo Driver
  • Panasonic KX-FT936CN Plain Paper Fax Machine
  • Panasonic DL-1109CWS Electric Bidet Toilet Seat
  • PACIFIC SCIENTIFIC 33VM52-000-29 LDA-196-1000CE Servo Motor Controller
  • PACIFIC LA23GCKC-1G Linear Actuator Specifications
  • PACIFIC PC3406AI-001-E Stepper Controller Manual
  • PACIFIC SCE904AN-002-01 Servo Drive Analysis
  • PACIFIC 6445-001-K-N Digital Servo Drive Details
  • PACIFIC SCIENTIFIC R43HCNA-R2-NS-VS-00 Motor Data
  • Pacific Scientific H32NCHA-LNN-NS-00 Hybrid Motor Performance
  • ABB DSAI130DK01 3BSE020828R1 Analog Input Module
  • Parker 466966-0001-3820 Industrial Component Data
  • PARKER ZETA6104 Microstepping System
  • PARKER COMPAX 2500S/F3 Servo Drive Manual Details
  • PARKER CX-DH Indexer Drive Technical Specifications
  • PARKER 6K8 Motion Controller Features and Specifications
  • PARKER EVM32-BASE I/O Module Base Technical Specification
  • ABB Pb PN-112718 Digital Input Module
  • Pb PN-45734 PN-73899 Industrial Automation Module
  • Control Techniques Pb PN-40856 Industrial Control Module
  • Pb PN-104412 4002910956 Industrial Control Module
  • Siemens Pb PN-41513 Industrial Ethernet Module
  • Pelco PA30-0065-00-A1 PTZ Decoder Module
  • Pentek FILTER 3F11 800000919 Pleated Filter Cartridge
  • Pepperl+Fuchs RSD-TI-EX8 Temperature Input Module
  • PERITEK AC7-00712-1113 Industrial Interface Module
  • PFEIFFER EVR116 Vacuum Control Module
  • Pepperl+Fuchs RSD-CI-EX8 Hazardous Area Interface Module
  • PEPPERL+FUCHS 2108HAT Intrinsic Safety Barrier Module
  • Philips 958481320201 PROC+ Processing Unit
  • Philips 958481321300 PSB Power Supply Board
  • Philips 958481321220 PD208 Power Module
  • PHILIPS 958481321200 PD216 Control Module
  • PHILIPS 958481320201 PROC PLUS Control Module
  • Philips 958481320400 PIF Interface Module
  • Philips 958481320100 LCB Control Board
  • PHILIPS 958481223220 Industrial Control Module
  • PHILIPS 958481223223 Industrial Control Module
  • PHILIPS 958481321300 Industrial Control Module
  • PHILIPS SCM040 Digital Output Synchronization Module
  • PHILIPS DSI020 Data Storage Interface Module
  • PHILIPS OPM010 Optoelectronic Control Module
  • PHILIPS VBM010 Industrial Automation Module
  • PHILIPS VBM030 Turbine Supervisory Instrumentation
  • PHILIPS PR1613 Industrial Control Module
  • PHOENIX PATG1/23 1013847 Ground Terminal Block
  • Phoenix Contact IB ST 24 AI 4/SF Analog Input
  • Phoenix Contact OPC5315-004-AB Industrial PC
  • Phoenix Contact UMK-SE11.25-1 Side Element
  • PHOENIX 2961192 Relay Module
  • PHOENIX IB ST ZF 24 AI 4/SF Analog Input Module
  • Phoenix Contact PLC-BSC-24DC/21 Relay Base
  • Phoenix Contact UK6N Feed-Through Terminal Block
  • Phoenix Contact UK4-T Disconnect Terminal Block
  • Phoenix UK3N Screw Terminal Block
  • Phoenix QUINT-PS-100-240AC/10 Power Supply
  • Phoenix QUINT PS-100-240AC/24DC/10 Power Supply
  • Phoenix UT 6-HE SI Surge Protection Terminal Block
  • Phoenix UT 4-MTD Feed-through Terminal Block
  • Phoenix UT 4-HE SI Surge Protection Terminal Block
  • Phoenix IBS 24BK-I/O-T Bus Coupler
  • Phoenix Contact HDFK4 High-Current Terminal Block
  • PHOENIX ST-SI-UK4 Fuse Terminal Block
  • PHOENIX FLMC10BASE-T/FO G850 Fiber Media Converter
  • PHOENIX CONTACT QUINT-PS-100-240AC/24DC/40 Power Supply
  • PHOENIX CONTACT QUINT-DIODE/40 Redundancy Module
  • Phoenix Contact 2884208 Wireless I/O MUX
  • Photonetics 3646 HE 1540 Tunable Laser Source
  • PI C-663.12 Mercury Multi-Axis Step Motor Controller
  • PI C-663.10 Mercury Step Motor Controller
  • Pillar CB6687-2L Industrial Communication Board
  • Pilz DE-106712 A.F.051.5/01 Safety Module
  • Pilz 680003 Safety Relay Module Set
  • Pilz 301140 PNOZ X3 Safety Relay
  • Pilz P1U-1NB Safety Relay
  • Pioneer PM3398B-6-1-3-E Power Supply
  • Pioneer Magnetics PM3326B-6-1-2-E Power Supply
  • Pioneer Magnetics HYRSP-1500-56 Power Supply
  • Pioneer Magnetics PM3398B-6-1-3-E Power Supply
  • Pioneer Magnetics PM3328BP-6 Power Supply
  • Potter & Brumfield SDAS-01-7Y2S1024 Relay
  • Powec PMP10.48 SIC High-Efficiency Rectifier
  • Powerbox PU200-31C Industrial DC-DC Converter
  • PIONEER MAGNETICS PM3398BP-6-1-3-E Power Supply Module
  • PIONEER MAGNETICS PM1253AL-6-3-Z03 Power Supply Module
  • Powerex PD411811 Rectifier Diode Module
  • Power-One MAP55-1024 AC-DC Power Supply
  • ProSoft MVI56-MDA4 ControlLogix Multi-Protocol
  • POLYSPED PRD2-200 Industrial Drive Module
  • P-OPEN P-OPEN-P4-150 PAC-OP150 Operator Panel
  • ABB Processor 958481321210 350211080320 Rugged CPU
  • ABB Processor 958481320201 350211080460 Safety CPU
  • ABB Processor 958481321200 350211080320 CPU Module
  • ABB Processor 958481321220 350211080320 CPU Module
  • ABB Processor 958481320100 350211080090 CPU Module
  • Pro-Face PL5901-T42-24V HMI Touch Panel
  • PROFIBUS PB3-VME-1-E V1.2.2 Interface Card
  • PROMESS 850040060P Force Displacement Monitor