The prediction of compound properties from chemical structure is a main task for machine learning (ML) in medicinal chemistry. ML is often applied to large data sets in applications such as compound screening, virtual library enumeration, or generative chemistry. Albeit desirable, a detailed understanding of ML model decisions is typically not required in these cases. By contrast, compound optimization efforts rely on small data sets to identify structural modifications leading to desired property profiles. In this situation, if ML is applied, one usually is reluctant to make decisions based on predictions that cannot be rationalized. Only few ML methods are interpretable. However, to yield insights into complex ML model decisions, explanat...
The identification of small potent compounds that selectively bind to the target under consideration...
Automated chemical synthesis is one of the long-term goals pursued in the field of chemistry. In rec...
Discovering chemicals with desired attributes is a long and painstaking process. Curated datasets co...
We try to determine if machine learning (ML) methods, applied to the discovery of new materials on t...
The field of crystal structure prediction (CSP) has changed dramatically over the past decade and me...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
Matched molecular pair (MMP) analyses are widely used in compound optimization projects to gain insi...
This electronic version was submitted by the student author. The certified thesis is available in th...
The performance of a model is dependent on the quality and information content of the data used to b...
Screening of compound libraries against panels of targets yields profiling matrices. Such matrices t...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Machine learning (ML) is a promising approach for predicting small molecule properties in drug disco...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
The identification of small potent compounds that selectively bind to the target under consideration...
Automated chemical synthesis is one of the long-term goals pursued in the field of chemistry. In rec...
Discovering chemicals with desired attributes is a long and painstaking process. Curated datasets co...
We try to determine if machine learning (ML) methods, applied to the discovery of new materials on t...
The field of crystal structure prediction (CSP) has changed dramatically over the past decade and me...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
Matched molecular pair (MMP) analyses are widely used in compound optimization projects to gain insi...
This electronic version was submitted by the student author. The certified thesis is available in th...
The performance of a model is dependent on the quality and information content of the data used to b...
Screening of compound libraries against panels of targets yields profiling matrices. Such matrices t...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Machine learning (ML) is a promising approach for predicting small molecule properties in drug disco...
Methods to predict crystallization behavior for active pharmaceutical ingredients (APIs) can serve a...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
The identification of small potent compounds that selectively bind to the target under consideration...
Automated chemical synthesis is one of the long-term goals pursued in the field of chemistry. In rec...
Discovering chemicals with desired attributes is a long and painstaking process. Curated datasets co...