MIT News - Artificial intelligence 09月25日
ChemXploreML,让化学家轻松预测分子性质
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ChemXploreML是一款由麻省理工学院McGuire研究组开发的用户友好型桌面应用程序,旨在帮助化学家预测分子性质,无需高级编程技能。该应用程序通过内置的分子嵌入器将化学结构转化为计算机可理解的数值向量,并利用最先进的算法识别模式,准确预测沸点、熔点等分子性质。ChemXploreML的目标是使机器学习在化学科学中的使用民主化,通过直观、强大且支持离线操作的桌面应用程序,将最先进的预测模型直接交付给化学家,无论其编程背景如何。

🔬 ChemXploreML是一款由麻省理工学院McGuire研究组开发的用户友好型桌面应用程序,旨在帮助化学家预测分子性质,无需高级编程技能。该应用程序通过内置的分子嵌入器将化学结构转化为计算机可理解的数值向量,并利用最先进的算法识别模式,准确预测沸点、熔点等分子性质。

📊 该应用程序在五个关键有机化合物分子性质(熔点、沸点、蒸汽压、临界温度和临界压力)的测试中达到了高达93%的准确率,特别是在临界温度预测方面表现出色。研究人员还证明了一种新的、更紧凑的分子表示方法(VICGAE)在速度上比标准方法(如Mol2Vec)快10倍,但准确率几乎相同。

🌐 ChemXploreML的设计目标是随着时间的推移不断进化,以便未来技术和算法能够无缝集成到应用程序中,确保研究人员始终能够访问和实施最新方法。该应用程序完全免费,易于下载,并在主流平台上运行,还支持离线操作,有助于保持研究数据的专有性。

🤝 ChemXploreML的愿景是让任何研究人员都能轻松定制和应用机器学习来解决独特挑战,从开发可持续材料到探索星际空间的复杂化学。

One of the shared, fundamental goals of most chemistry researchers is the need to predict a molecule’s properties, such as its boiling or melting point. Once researchers can pinpoint that prediction, they’re able to move forward with their work yielding discoveries that lead to medicines, materials, and more. Historically, however, the traditional methods of unveiling these predictions are associated with a significant cost — expending time and wear and tear on equipment, in addition to funds.

Enter a branch of artificial intelligence known as machine learning (ML). ML has lessened the burden of molecule property prediction to a degree, but the advanced tools that most effectively expedite the process — by learning from existing data to make rapid predictions for new molecules — require the user to have a significant level of programming expertise. This creates an accessibility barrier for many chemists, who may not have the significant computational proficiency required to navigate the prediction pipeline. 

To alleviate this challenge, researchers in the McGuire Research Group at MIT have created ChemXploreML, a user-friendly desktop app that helps chemists make these critical predictions without requiring advanced programming skills. Freely available, easy to download, and functional on mainstream platforms, this app is also built to operate entirely offline, which helps keep research data proprietary. The exciting new technology is outlined in an article published recently in the Journal of Chemical Information and Modeling.

One specific hurdle in chemical machine learning is translating molecular structures into a numerical language that computers can understand. ChemXploreML automates this complex process with powerful, built-in "molecular embedders" that transform chemical structures into informative numerical vectors. Next, the software implements state-of-the-art algorithms to identify patterns and accurately predict molecular properties like boiling and melting points, all through an intuitive, interactive graphical interface. 

"The goal of ChemXploreML is to democratize the use of machine learning in the chemical sciences,” says Aravindh Nivas Marimuthu, a postdoc in the McGuire Group and lead author of the article. “By creating an intuitive, powerful, and offline-capable desktop application, we are putting state-of-the-art predictive modeling directly into the hands of chemists, regardless of their programming background. This work not only accelerates the search for new drugs and materials by making the screening process faster and cheaper, but its flexible design also opens doors for future innovations.” 

ChemXploreML is designed to to evolve over time, so as future techniques and algorithms are developed, they can be seamlessly integrated into the app, ensuring that researchers are always able to access and implement the most up-to-date methods. The application was tested on five key molecular properties of organic compounds — melting point, boiling point, vapor pressure, critical temperature, and critical pressure — and achieved high accuracy scores of up to 93 percent for the critical temperature. The researchers also demonstrated that a new, more compact method of representing molecules (VICGAE) was nearly as accurate as standard methods, such as Mol2Vec, but was up to 10 times faster.

“We envision a future where any researcher can easily customize and apply machine learning to solve unique challenges, from developing sustainable materials to exploring the complex chemistry of interstellar space,” says Marimuthu. Joining him on the paper is senior author and Class of 1943 Career Development Assistant Professor of Chemistry Brett McGuire.

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ChemXploreML 机器学习 化学研究 分子性质预测 桌面应用程序
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