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The field of solid-state pharmaceutics comprises a broad range of investigations into various structural aspects of pharmaceutical solids, establishing a rational structure-property correlation. These solid systems allow the tunability of the physicochemical properties, such as solubility and dissolution, which in turn influence the pharmacokinetic and pharmacodynamic parameters of the active pharmaceutical ingredient (API). Hence, the study of physical characteristics of an API, e.g., different crystalline vs amorphous forms, molecular complexes such as solvates, cocrystals, coamorphous and polymeric dispersions, etc., along with an understanding of interconversion of one form into the other forms, a basis for successful product development. A product's time to market is typically prolonged by the time it takes to complete the development aspects of the product compared to the time required for lead optimization, i.e., for identification of the right chemical entity. Recent advancements in computational techniques have revolutionized the field of solid-state pharmaceutics in understanding molecular-level mechanisms while significantly cutting down the time and resources needed for drug development. Over the years, there have been increasing contributions of the computational tools demonstrated by the successful implementation of computationally obtained prediction models validated and benchmarked against conventional experimental results. Examples include application of Density Functional Theory, molecular dynamics, and artificial neural networks to screen coformers, polymers for cocrystallization, and ASD formation; crystal structure prediction to select correct polymorphs with desired characteristics, and also to predict interactions with excipients. It has been proven that computational tools can effectively troubleshoot and address issues associated with the translational output of solid-state pharmaceutics. In this article, we present a series of case studies highlighting the use of modern computational techniques applied to critical stages of API, preformulation, and formulation developments contributing to accelerated drug development, while conserving on chemicals, solvents, and man-hours. Crucially, a concise sequential workflow is presented that explains the benefits of each of the computational methods in the toolbox, with the goal of assisting the readers in the specific application of these techniques, as per their requirements in the solid-state pharmaceutics domain.
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http://dx.doi.org/10.1021/acs.molpharmaceut.5c00296 | DOI Listing |
J Am Chem Soc
September 2025
State Key Laboratory of Advanced Materials for Intelligent Sensing and Key Laboratory of Organic Integrated Circuits, Ministry of Education & Tianjin Key Laboratory of Molecular Optoelectronic Sciences, Institute of Molecular Plus, Department of Chemistry, Tianjin University, Tianjin 300072, China.
Incorporating boron atoms into organic macrocycles imparts unique chemical, electronic, and optical properties. The concept of making use of dative boron-nitrogen (B ← N) bonds for the construction of macrocycles has been proposed, but very few examples have been prepared with functional structures, much less pillar-like and other prismatic macrocycles, and their various functionalities have not been fully exploited. Here, we introduce a "functional molecular wall" synthetic protocol based on the self-assembly characteristics of B ← N dative bonds to construct highly symmetrical macrocycles, forming a quasi-pentagonal-shaped macrocycle (named [5]pyBN-) with a pillar-like structure.
View Article and Find Full Text PDFInt J Pharm
September 2025
Chemical and Biochemical Engineering, Western University, London, Ontario N6A 5B9, Canada. Electronic address:
Salts and cocrystals are vital multicomponent entities for tuning pharmaceuticals' solid-state properties, yet their experimental screening is labor-intensive and often inefficient. We introduce a DualNet Ensemble algorithm, a multi-class classification model that integrates molecular graph embeddings with curated physicochemical descriptors to predict the formation of salts, cocrystals, or physical mixtures while estimating predictive uncertainty. The proposed DualNet was trained on 70 % of a curated dataset containing 22,298 experimentally validated entries.
View Article and Find Full Text PDFAdv Healthc Mater
September 2025
Q. Li, K. Zou, Prof. Y. Zhang, National Laboratory of Solid State Microstructures, Jiangsu Key Laboratory of Artificial Functional Materials, Chemistry and Biomedicine Innovation Center, Collaborative Innovation Center of Advanced Microstructures, College of Engineering and Applied Sciences, Nanjing
Osteoarthritis is a chronic, degenerative, and disabling disease affecting over 500 million people worldwide, leading to significant medical costs. Monitoring changes in the biochemical components of synovial fluid is crucial for understanding the onset and progression of osteoarthritis. However, this remains a challenge because the volume of synovial fluid is low, synovial tissue is prone to inflammation after mechanical injury, joint movement is frequent, and the space is limited, which poses significant limitations for the sensor-tissue interface and the size of the device.
View Article and Find Full Text PDFAAPS PharmSciTech
September 2025
Division of Molecular Pharmaceutics and Drug Delivery, College of Pharmacy, The University of Texas at Austin, Austin, TX, 78712, USA.
Pediatric neuropathy poses significant challenges in pain management due to the limited availability of approved pharmacological options. Gabapentin, commonly used for neuropathic pain, offers therapeutic potential but necessitates careful dosing due to its variable bioavailability. This study investigates the integration of Hot Melt Extrusion and Fused Deposition Modeling in the development of polycaprolactone-based implants for sustained release of Gabapentin.
View Article and Find Full Text PDFLangmuir
September 2025
School of Pharmaceutical and Chemical Engineering, Taizhou University, Taizhou 318000, China.
The efficient and selective activation of C(sp)-H bonds in toluene plays a pivotal role in the synthesis of value-added chemicals, yet achieving this transformation under mild conditions remains a challenge. Herein, the Au nanoparticles supported on rich-nitrogen vacancies on CN (AuNPs/CN-N) are synthesized via Ar atmosphere calcination and photoinduced deposition. The electronic state and coordination environment of Au species, as well as nitrogen vacancies, are systematically elucidated using X-ray absorption fine structure (XAFS), X-ray photoelectron spectroscopy (XPS), electron spin resonance (ESR), and in situ Fourier-transform infrared (in situ FT-IR).
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