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Machine learning tool sets out to find new antimicrobial peptides – Chemistry World

By combining machine learning, molecular dynamics simulations and experiments it has been possible to design antimicrobial peptides from scratch.1 The approach by researchers at IBM is an important advance in a field where data is scarce and trial-and-error design is expensive and slow.

Antimicrobial peptides small molecules consisting of 12 to 50 amino acids are promising drug candidates for tackling antibiotic resistance. The co-evolution of antimicrobial peptides and bacterial phyla over millions of years suggests that resistance development against antimicrobial peptides is unlikely, but that should be taken with caution, comments Hvard Jenssen at Roskilde University in Denmark, who was not involved in the study.

Artificial intelligence (AI) tools are helpful in discovering new drugs. Payel Das from the IBM Thomas J Watson Research Centre in the US says that such methods can be broadly divided into two classes. Forward design involves screening of peptide candidates using sequenceactivity or structureactivity models, whereas the inverse approach considers targeted and de novo molecule design. IBMs AI framework, which is formulated for the inverse design problem, outperforms other de novo strategies by almost 10%, she adds.

Within 48 days, this approach enabled us to identify, synthesise and experimentally test 20 novel AI-generated antimicrobial peptide candidates, two of which displayed high potency against diverse Gram-positive and Gram-negative pathogens, including multidrug-resistant Klebsiella pneumoniae, as well as a low propensity to induce drug resistance in Escherichia coli, explains Das.

The team first used a machine learning system called a deep generative autoencoder to capture information about different peptide sequences and then applied controlled latent attribute space sampling, a new computational method for generating peptide molecules with custom properties. This created a pool of 90,000 possible sequences. We further screened those molecules using deep learning classifiers for additional key attributes such as toxicity and broad-spectrum activity, Das says. The researchers then carried out peptidemembrane binding simulations on the pre-screened candidates and finally selected 20 peptides, which were tested in lab experiments and in mice. Their studies indicated that the new peptides work by disrupting pathogen membranes.

The authors created an exciting way of producing new lead compounds, but theyre not the best compounds that have ever been made, says Robert Hancock from the University of British Columbia in Canada, who discovered other peptides with antimicrobial activity in 2009.2 Jenssen participated in that study too and agrees. The identified sequences are novel and cover a new avenue of the classical chemical space, but to flag them as interesting from a drug development point of view, the activities need to be optimised.

Das points out that IBMs tool looks for new peptides from scratch and doesnt depend on engineered input features. This line of earlier work relies on the forward design problem, that is, screening of pre-defined peptide libraries designed using an existing antimicrobial sequence, she says.

Hancock agrees that this makes the new approach challenging. The problem they were trying to solve was much more complex because we narrowed down to a modest number of amino acids whereas they just took anything that came up in nature, he says. That could represent a significant advance, but the output at this stage isnt optimal. Hancock adds that the strategy does find some good sequences to start with, so he thinks it could be combined with other methods to improve on those leads and come up with really good molecules.

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Machine learning tool sets out to find new antimicrobial peptides - Chemistry World

Machine learning methods to predict mechanical ventilation and mortality in patients with COVID-19 – DocWire News

This article was originally published here

PLoS One. 2021 Apr 1;16(4):e0249285. doi: 10.1371/journal.pone.0249285. eCollection 2021.

ABSTRACT

BACKGROUND: The Coronavirus disease 2019 (COVID-19) pandemic has affected millions of people across the globe. It is associated with a high mortality rate and has created a global crisis by straining medical resources worldwide.

OBJECTIVES: To develop and validate machine-learning models for prediction of mechanical ventilation (MV) for patients presenting to emergency room and for prediction of in-hospital mortality once a patient is admitted.

METHODS: Two cohorts were used for the two different aims. 1980 COVID-19 patients were enrolled for the aim of prediction ofMV. 1036 patients data, including demographics, past smoking and drinking history, past medical history and vital signs at emergency room (ER), laboratory values, and treatments were collected for training and 674 patients were enrolled for validation using XGBoost algorithm. For the second aim to predict in-hospital mortality, 3491 hospitalized patients via ER were enrolled. CatBoost, a new gradient-boosting algorithm was applied for training and validation of the cohort.

RESULTS: Older age, higher temperature, increased respiratory rate (RR) and a lower oxygen saturation (SpO2) from the first set of vital signs were associated with an increased risk of MV amongst the 1980 patients in the ER. The model had a high accuracy of 86.2% and a negative predictive value (NPV) of 87.8%. While, patients who required MV, had a higher RR, Body mass index (BMI) and longer length of stay in the hospital were the major features associated with in-hospital mortality. The second model had a high accuracy of 80% with NPV of 81.6%.

CONCLUSION: Machine learning models using XGBoost and catBoost algorithms can predict need for mechanical ventilation and mortality with a very high accuracy in COVID-19 patients.

PMID:33793600 | DOI:10.1371/journal.pone.0249285

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Machine learning methods to predict mechanical ventilation and mortality in patients with COVID-19 - DocWire News

Machine Learning Operationalization Software Market 2021 Is Booming Across the Globe by Share, Size, Growth, Segments and Forecast to 2027 | Top…

The Global Machine Learning Operationalization Software Market report dissects the complex fragments of the market in an easy to read manner. This report covers drivers, restraints, challenges, and threats in the Machine Learning Operationalization Software market to understand the overall scope of the market in a detailed yet concise manner. Additionally, the market report covers the top-winning strategies implemented by major industry players and technological advancements that steers the growth of the market.

Key Players Landscape in the Machine Learning Operationalization Software Report

MathWorksSASMicrosoftParallelMAlgorithmiaH20.aiTIBCO SoftwareSAPIBMDominoSeldonDatmoActicoRapidMinerKNIME

Note: Additional or any specific company of the market can be added in the list at no extra cost.

Here below are some of the details that are included in the competitive landscape part of the market report:

This market research report enlists the governments and regulations that can provide remunerative opportunities and even create pitfalls for the Machine Learning Operationalization Software market. The report confers details on the supply & demand scenario in the market while covering details about the product pricing factors, trends, and profit margins that helps a business/company to make crucial business decisions such as engaging in creative strategies, product development, mergers, collaborations, partnerships, and agreements to expand the market share of the company.

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An Episode of Impact of COVID-19 Pandemic in the Machine Learning Operationalization Software Market

The COVID-19 pandemic had disrupted the global economy. This is due to the fact that the government bodies had imposed lockdown on commercial and industrial spaces. However, the market is anticipated to recover soon and is anticipated to reach the pre-COVID level by the end of 2021 if no further lockdown is imposed across the globe.

In this chapter of the report, DataIntelo has provided in-depth insights on the impact of COVID-19 on the market. This chapter covers the long-term challenges ought to be faced due to the pandemic while highlights the explored opportunities that benefited the industry players globally. The market research report confers details about the strategies implemented by industry players to survive the pandemic. Meanwhile, it also provides details on the creative strategies that companies implemented to benefit out of pandemic. Furthermore, it lays out information about the technological advancements that were carried out during the pandemic to combat the situation.

What are the prime fragments of the market report?

The Machine Learning Operationalization Software report can be segmented into products, applications, and regions. Here below are the details that are going to get covered in the report:

Products

Cloud BasedOn Premises

Applications

BFSIEnergy and Natural ResourcesConsumer IndustriesMechanical IndustriesService IndustriesPublice SectorsOther

Regions

North America, Europe, Asia Pacific, Middle East & Africa, and Latin America

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Below is the TOC of the report:

Executive Summary

Assumptions and Acronyms Used

Research Methodology

Machine Learning Operationalization Software Market Overview

Global Machine Learning Operationalization Software Market Analysis and Forecast by Type

Global Machine Learning Operationalization Software Market Analysis and Forecast by Application

Global Machine Learning Operationalization Software Market Analysis and Forecast by Sales Channel

Global Machine Learning Operationalization Software Market Analysis and Forecast by Region

North America Machine Learning Operationalization Software Market Analysis and Forecast

Latin America Machine Learning Operationalization Software Market Analysis and Forecast

Europe Machine Learning Operationalization Software Market Analysis and Forecast

Asia Pacific Machine Learning Operationalization Software Market Analysis and Forecast

Asia Pacific Machine Learning Operationalization Software Market Size and Volume Forecast by Application

Middle East & Africa Machine Learning Operationalization Software Market Analysis and Forecast

Competition Landscape

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Machine Learning Operationalization Software Market 2021 Is Booming Across the Globe by Share, Size, Growth, Segments and Forecast to 2027 | Top...

Global Machine Learning-as-a-Service (MLaaS) Market Development Strategy, Manufacturers Analysis, COVID-19 impact, and Forecast 2020-2025 The Bisouv…

Global Machine Learning-as-a-Service (MLaaS) Market SWOT Analysis | Growth Analysis Research Report 2020 | Top Key players update, COVID-19 impact analysis and Forecast 2025

Our latest research report entitled Global Machine Learning-as-a-Service (MLaaS) Market report 2020-2025 provides comprehensive and deep insights into the market dynamics and growth of Machine Learning-as-a-Service (MLaaS). The latest information on market risks, industry chain structure, Machine Learning-as-a-Service (MLaaS) cost structure, and opportunities are offered in this report. The entire industry is fragmented based on geographical regions, a wide range of applications, and Machine Learning-as-a-Service (MLaaS) types. The past, present, and forecast market information will lead to investment feasibility by studying the crucial Machine Learning-as-a-Service (MLaaS) growth factors. The SWOT analysis of leading Machine Learning-as-a-Service (MLaaS) players (SAS Institute Inc., Google LLC, Hewlett Packard Enterprise Development LP, Artificial Solutions)will help the readers in analyzing the opportunities and threats to the market development.

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Initially, the report illustrates the fundamental overview of Machine Learning-as-a-Service (MLaaS) on basis of the product description, classification, cost structures, and type. The past, present, and forecast Machine Learning-as-a-Service (MLaaS) market statistics are offered. The market size analysis is conducted on the basis of Machine Learning-as-a-Service (MLaaS) market concentration, value and volume analysis, growth rate, and emerging market segments.

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The foremost regions analyzed in this study include North America (United States, Canada, Mexico, and Others), Europe (Germany, France, Russia, Italy, Netherlands, and Others), South America (Columbia, Brazil, Argentina, and Others), Asia-Pacific (China, Japan, Korea, India, and Others), Middle East & Africa (Saudi Arabia, UAE, Egypt, South Africa, and Others) and rest of the world.

On the basis of Types, the Machine Learning-as-a-Service (MLaaS) market is primarily split into,

On the basis of applications, the Machine Learning-as-a-Service (MLaaS) market is primarily split into,

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Comprehensive research methodology which drives the Machine Learning-as-a-Service (MLaaS) market statistics can be structured as follows:

The leading Machine Learning-as-a-Service (MLaaS) players, their company profile, growth rate, market share, and global presence are covered in this report. The competitive Machine Learning-as-a-Service (MLaaS) scenario on the basis of price and gross margin analysis is studied in this report. All the key factors like consumption volume, price trends, market share, import-export details, manufacturing capacity are included in this report. The forecast market information will lead to strategic plans and an informed decision-making process. The emerging Machine Learning-as-a-Service (MLaaS) market sectors, mergers, and acquisitions, market risk factors are analyzed. Lastly, the research methodology and data sources are presented

Segment 1, states the objectives of Machine Learning-as-a-Service (MLaaS) market, overview, introduction, product definition, development aspects, and industry presence;

Segment 2, elaborates the Machine Learning-as-a-Service (MLaaS) market based on key players, their market share, sales volume, company profiles, Machine Learning-as-a-Service (MLaaS) competitive market scenario, and pricing

Segment 3, analyzes the Machine Learning-as-a-Service (MLaaS) market at a regional level based on sales ratio and market size from 2015 to 2019;

Segment 4, 5, 6 and 7, explains the Machine Learning-as-a-Service (MLaaS) market at the country level based on product type, applications, revenue analysis;

Segment 8 and 9, states the Machine Learning-as-a-Service (MLaaS) industry overview during past, present, and forecast period from 2020 to 2025;

Segment 10 and 11, describes the market status, plans, expected growth based on regions, type and application in detail for a forecast period of 2020-2025;

Segment 12, covers the marketing channels, dealers, manufacturers, traders, distributors, consumers of Machine Learning-as-a-Service (MLaaS).

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Global Machine Learning-as-a-Service (MLaaS) Market Development Strategy, Manufacturers Analysis, COVID-19 impact, and Forecast 2020-2025 The Bisouv...

CW Innovation Awards: Jio Platforms taps machine learning to manage telco network – ComputerWeekly.com

The telecommunication networks of the future will not only have to support millions of 4G and 5G subscribers, but must also manage a huge number of connected internet-of-things (IoT) devices. With the need to meet exponentially growing data and signalling requirements, a new approach is needed to cope with the unpredictable and surging demands placed on modern networks.

Jio Platforms, a subsidiary of Reliance Industries, turned to machine learning to autonomously manage its large communication infrastructure. With a modest budget of $1m, Jio Platforms designed and implemented Atom, an artificial intelligence-based platform, from scratch within 12 months to process more than 500 billion records a day.

At its heart, Atom, which helped Jio Platforms clinch the telecoms category in the Computer Weekly Innovation Awards APAC, is a disaggregated data lake platform tailored to enable smarter network operations using machine learning.

Atom an acronym for Adaptive Troubleshooting, Operations and Management was designed to collect and process a massive volume of network-centric statistics and events. The goal was to proactively detect anomalous network patterns and facilitate root-cause analysis and resolution before network problems even impact operations.

Jio Platforms said Atom provides code-free operational insights, data binding and correlation. Built with automated service-level agreement (SLA) management capabilities in the workflow engine, it orchestrates operational tasks between systems for organisational transparency.

It can also offer instant notifications and live data tracking from the vast amount of data collected using virtual probes and various network functions. This is made possible by a data ingestion engine designed to process billions of documents. Immediate action therefore becomes possible, as opposed to the traditional approach of only reacting to problems.

The Atom platform provides multiple ways to create reports and dashboards on the fly. Detection includes comparisons with baseline data and monitoring of operational metrics. Once a relevant condition is identified, the system analyses the data by correlating, searching for errors, or deriving the real context of the erroneous scenario.

But why did Jio Platforms begin building this first-of-its-kind system instead of relying on a suitable commercial solution? The company said it has always worked to reduce dependence on external providers and cited the cost-related advantages of developing an in-house solution that relies on software running on standard servers. Indeed, because Atom avoids the use of proprietary probes, vendor dependencies were also eliminated on that front.

Building the entire system in-house meant Jio Platforms could focus on innovation and adopt tried-and-true practices, such as developing an open solution that interoperates well with third-party systems. Atom conforms with various standards from the European Telecommunications Standards Institute and 3GPP and has the versatility to support network functions from the edge, core, on the various layers of the IP stack, and IoT applications.

Because crucial software components are developed from the ground up, the team could incorporate high-performance considerations and state-optimised designs for application resilience from the start. Jio Platforms said Atom has real-time analytics capabilities to process 50 million records every second, as well as a record capacity of over 10 trillion with support for more than 100PB of storage.

The platform has unique anomaly detection capabilities that can drill down to individual end-nodes, whether a physical server, virtual machine or containerised service, to precisely identify problematic elements within the network.

Also, the system can understand and correlate counters and logs from the radio access network (RAN) and other systems to identify the causes of failure and take corrective actions.

Telecommunications companies operate with very large network infrastructure with large volumes of data traffic, said the team. Processing and analysing this data with the help of scientific algorithms, methodologies and tools is the need of the hour.

It was with this in mind that Jio Platforms built Atom to enable actionable intelligence from network data in real time.

Continuous demand for scaling the telecom network is to be expected over the next few years as the colossal data volumes driven by 5G become a reality. More than ever, operational procedures will have to be automated to meet the ever-growing needs of modern networks and for telecommunication firms to stay relevant.

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CW Innovation Awards: Jio Platforms taps machine learning to manage telco network - ComputerWeekly.com