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  • February 12, 2012
  • 02:01 PM
  • 24 views

Chemical Ghosts in the Machine

by Cris Campbell in Genealogy of Religion

If we think deeply about evolution, we eventually will ask questions not about the origin of species but about the origin of life. For some theistic evolutionists, this is the point of Designer intervention. They find it hard to imagine that chemicals could combine in way that gives rise to life. For those less inclined [...]... Read more »

Peretó J. (2005) Controversies on the origin of life. International microbiology : the official journal of the Spanish Society for Microbiology, 8(1), 23-31. PMID: 15906258  

Orgel LE. (1998) The origin of life--a review of facts and speculations. Trends in biochemical sciences, 23(12), 491-5. PMID: 9868373  

  • February 11, 2012
  • 03:30 PM
  • 34 views

Searching for E.T., III: Arsenic, DNA and alien life

by Mutant Dragon in Puff the Mutant Dragon

For those unfortunate enough to inherit it, sickle cell anemia is a devastating disease. Victims suffer from symptoms like frequent infections, persistent fatigue and bouts of crippling pain. It’s a little surprising to realize all this havoc stems from a single and seemingly minor change in the hemoglobin protein — exchanging one amino acid called glutamate for another called valine. That swap creates a pocket on the surface of the protein that can bind other hemoglobin molecules when oxygen is in short supply.... Read more »

  • February 10, 2012
  • 05:23 AM
  • 26 views

Forming crystals from supercooled liquids with lasers

by DundeePhysics in Dundee Physics

One of the things that we are working on in the lab is the study of ice nucleation making use of optically trapped droplets. Nucleation is in the starting point for processes such as freezing and crystallization, and so obviously is of great scientific and industrial importance. Another of the things that my group is [...]... Read more »

  • February 6, 2012
  • 08:39 AM
  • 59 views

A perfect couple for designing chemical reactions

by Joerg Heber in All that matters

We are all familiar with the basic ways in which light interacts with matter, when light absorption  causes atoms to move and creates heat, or when light gets absorbed by the outer electrons of atoms so that they move into energetically excited states, which is how electricity in solar cells is created. Common to both [...]... Read more »

Schwartz, T., Hutchison, J., Genet, C., & Ebbesen, T. (2011) Reversible Switching of Ultrastrong Light-Molecule Coupling. Physical Review Letters, 106(19). DOI: 10.1103/PhysRevLett.106.196405  

Hutchison, J., Schwartz, T., Genet, C., Devaux, E., & Ebbesen, T. (2012) Modifying Chemical Landscapes by Coupling to Vacuum Fields. Angewandte Chemie International Edition. DOI: 10.1002/anie.201107033  

  • February 4, 2012
  • 06:55 PM
  • 61 views

Searching for E.T., II: Ammonia-drinking aliens

by Mutant Dragon in Puff the Mutant Dragon

In the movies, lab chemicals are usually blue, green or some other startling color. In reality, most of the chemicals you encounter in a lab are colorless or have fairly boring colors. There are exceptions, however, and this is one of them.... Read more »

Benner, S., Ricardo, A., & Carrigan, M. (2004) Is there a common chemical model for life in the universe?. Current Opinion in Chemical Biology, 8(6), 672-689. DOI: 10.1016/j.cbpa.2004.10.003  

  • January 27, 2012
  • 10:10 AM
  • 141 views

Oxford University Censor First Broadcast of Lecture That Resulted in Censuring of Prof. Nutt, Former UK Government Drugs Advisor

by Neurobonkers in Neurobonkers

Watch the full video of the lecture and uncover what was in the slides censored for "copyright reasons"... Read more »

Nutt, D. (2009) Estimating drug harms: a risky business?. Centre for Crime and Justice Studies. info:/

Halpern JH, Sherwood AR, Hudson JI, Gruber S, Kozin D, & Pope HG Jr. (2011) Residual neurocognitive features of long-term ecstasy users with minimal exposure to other drugs. Addiction (Abingdon, England), 106(4), 777-86. PMID: 21205042  

Carhart-Harris, R., Erritzoe, D., Williams, T., Stone, J., Reed, L., Colasanti, A., Tyacke, R., Leech, R., Malizia, A., Murphy, K.... (2012) Neural correlates of the psychedelic state as determined by fMRI studies with psilocybin. Proceedings of the National Academy of Sciences. DOI: 10.1073/pnas.1119598109  

Editorial team. (2010) The EMCDDA annual report 2010: the state of the drugs problem in Europe. The European Monitoring Centre for Drugs and Drug Addiction, also published in Euro surveillance :European communicable disease bulletin, 15(46). PMID: 21144426  

  • January 27, 2012
  • 10:00 AM
  • 111 views

Watermarking molecules

by Aaron Sterling in Nanoexplanations

I’ve posted twice about Anonymous hacking into Stratfor — and, more generally, their hacktivism has been making bigger and bigger waves.  CNN recently ran a fairly positive story on the support hacktivists are providing the Occupy movement.  Many of these … Continue reading →... Read more »

Joachim J. Eggers, W.D. Ihlenfeldt, & Bern Girod. (2001) Digital Watermarking of Chemical Structure Sets. Information Hiding, 200-214. DOI: 10.1007/3-540-45496-9_15  

  • January 26, 2012
  • 02:18 PM
  • 76 views

Spin Silk Like a Spider! No Legs Required (Just Microfluidics)

by Hector Munoz in Microfluidic Future

Biomimetics. I love that word. Well, probably not as much as microfluidics, but it’s a close second. If you’re unfamiliar with the word, it basically refers to design that mimics biology. Biological systems have evolved into finely tuned machines, why not mimic them in order to synthesize what we need? Biomimetics isn’t new, it’s been around in one form or another for a long time (my favorite instance is Velcro), but our capabilities are broadening as we are able to manufacture at smaller, micro and nano levels. If you want to learn more about this topic, you should check out the Biomimetic Microsystems Platform at the Wyss Institute. Today I’d like to share biomimetic microfluidic research that mimics the silk-spinning process of spiders from Korea University.... Read more »

  • January 19, 2012
  • 07:57 AM
  • 81 views

Exciting Elements

by E Markham in Genetic Cuckoo

A review of the book "The Disappearing Spoon" by Sam Kean, which is a wonderful book discussing the hidden history of the elements, which is written in a light and exciting way, leaving you with many fun facts and anecdotes to share. It is written in easily excessable language and relies on no indepth scientific knowledge. A fantastic book and highly recommended. ... Read more »

E Markham. (2012) Exciting Elements. Blogspot. info:/

  • January 17, 2012
  • 10:00 AM
  • 113 views

How a cup of coffee a day may help to keep type 2 diabetes at bay.

by Michelle Clement in Crude Matter

Many of us, especially the current or former graduate students among us, are addicted to our breakfast caffeinated beverage of choice. Mine is tea, but if I had to guess, I’d wager that the most popular option is coffee. We chug it down in the morning to get ready for our day, we sip it thoughtfully at work, and we seek it out in the wee hours when we should be sleeping but instead we’re at the lab or at our desks, telling ourselves that we’ll run just one more gel or write just one more page. The ritual of coffee (or tea!) is deeply ingrained in our daily lives for many of us, but aside from keeping us alert, what else does it do for us? A recent study suggests that certain polyphenolic compounds in tea and coffee may offer protective effects against type 2 diabetes mellitus (T2 diabetes) by interfering with the formation of amyloid fibrils in the pancreas. Wow, that sounds great, doesn’t it? Another excuse to drink more of the stuff! But what the heck does it mean? In order to understand how this might work, we first need to understand some concepts. Specifically, what is an amyloid fibril, and what does it have to do with T2 diabetes?... Read more »

  • January 16, 2012
  • 09:51 AM
  • 233 views

Is this journal for real?

by Neurobonkers in Neurobonkers

This year 134 suspect new journals have appeared from the abyss, all published by the same clandestine company “Scientific & Academic Publishing, USA“. Scientists have been quick to raise the alarm and ruthless in their response.... Read more »

Morrison, Heather. (2012) Scholarly Communication in Crisis. Freedom for scholarship in the internet age. Simon Fraser University School of Communication. info:/

  • January 9, 2012
  • 09:13 AM
  • 82 views

Giant optical gain in rare-earth-ion-doped amplifiers

by Dave Flanagan in materialsdave.com

Scientists at the University of Twente have developed high performance rare-earth-ion-doped optical fiber amplifiers.... Read more »

Geskus, D., Aravazhi, S., García-Blanco, S., & Pollnau, M. (2011) Giant Optical Gain in a Rare-Earth-Ion-Doped Microstructure. Advanced Materials. DOI: 10.1002/adma.201101781  

  • January 1, 2012
  • 09:41 AM
  • 250 views

Copyright vs Medicine: If this topic isn’t covered in your newspaper this weekend, get a new newspaper

by Neurobonkers in Neurobonkers

According to the New England Journal of Medicine, after thirty years of silence, authors of a standard clinical psychiatric bedside test have issued take down orders of new medical research.... Read more »

Newman, J., & Feldman, R. (2011) Copyright and Open Access at the Bedside. New England Journal of Medicine, 365(26), 2447-2449. DOI: 10.1056/NEJMp1110652  

  • December 31, 2011
  • 01:19 PM
  • 109 views

New Year’s Special: How Soon is Too Soon for an Alcohol Breath Test?

by Arielle D. Ross in Salamander Hours

As I mentioned in the latest “Top 3 Science links” post, for most of North America, New Year’s Eve signifies two things: a fresh start and/or alcohol. Sadly, the latter means that some of us will make bad decisions tonight, … Continue reading →... Read more »

  • December 26, 2011
  • 11:33 PM
  • 171 views

Science that’ll warm your hands

by Cath in Basal Science (BS) Clarified

After trying the hand-warmer my friend gave me for Christmas I thought, “cool, I wonder how this works?” Here’s the hand-warmer in action: So what’s going on?   The hand-warmer heats up when you bend the metal disk that’s inside the pouch. Bending the disk causes the liquid inside the hand-warmer to solidify. This change [...]... Read more »

Sandnes, B. (2008) The physics and the chemistry of the heat pad. American Journal of Physics, 76(6), 546. DOI: 10.1119/1.2830533  

  • December 22, 2011
  • 05:42 PM
  • 163 views

Unruly beasts in the jungle of molecular modeling

by The Curious Wavefunction in The Curious Wavefunction

The Journal of Computer-Aided Molecular Design is having a smorgasbord of accomplished modelers reflecting upon the state and future of modeling in drug discovery research and I would definitely recommend anyone - and especially experimentalists - interested in the role of modeling to take a look at the articles. Many of the articles are extremely thoughtful and balanced and take a hard look at the lack of rigorous studies and results in the field; if there was ever a need to make journal articles freely available it was for these kinds, and it's a pity they aren't. But here's one that is open access, and it's by some researchers from Simulations Inc. who talk about three beasts (or in the authors' words, "Lions and tigers and bears, oh my!") in the field that are either unsolved or ignored or both.1. Entropy: As they say, entropy, taxes and death (entropy) are the three constant things in life. In modeling both small molecules and proteins, entropy has always been the elephant in the room, blithely ignored in most simulations. At the beginning there was no entropy. Early modeling programs then started extracting a rough entropic penalty for freezing certain bonds in the molecule. While this approximated the loss of ligand entropy in binding, it did nothing to take care of the conformational entropy loss that resulted in the compression of a panoply of diverse conformations in solution to a single bound conformation. But we were just getting started. A very large part of the entropy of binding a ligand by a protein comes from the displacement of water molecules in the active site, essentially their liberation from being constrained prisoners of the protein to free-floating entities in the bulk. A significant advance in trying to take this factor into account was an approach that explicitly and dynamically calculated the enthalpy, entropy and therefore the free energy of bound waters in proteins. We have now reached the point where we can at least think of doing a reasonable calculation on such water molecules. But water molecules are often ill-localized in protein crystal structures because of low-resolution, inadequate refinement and other reasons. It's not easy to perform such calculations for arbitrary proteins without crystal structures.However, a large piece of the puzzle that's still missing is the entropy of the protein which is extremely difficult to calculate on many fronts. Firstly, the dynamics of the protein is often not captured by a static x-ray structure so any attempts to calculate protein entropy in the presence and absence of ligands would have to shake the protein around. Currently the favored process for doing this is molecular dynamics (MD) which suffers from its own problems, most notably the accuracy of what's under the hood- namely force fields. Secondly, even if we can calculate the total entropy changes, what we really need to know is how the entropy is distributed between various modes since only some of these modes are affected upon ligand binding. An example of the kind of situation in which such details would be important is the case of slow, tight-binding inhibitors illustrated in the paper. The example is of two different prostaglandin synthase inhibitors which demonstrate almost identical binding orientations in the crystal structure. Yet one is a weak binding inhibitor which dissociates rapidly and the other is slow, tight-binding. Only a dynamic treatment of entropy can explain such differences, and we are still quite far from being able to do this in the general case.2. Uncertainty: Out of all the hurdles facing the successful application and development of modeling in any field, this might be the most fundamental. To reiterate, almost every kind of modeling starts by using a training set of molecules for which the data is known and then proceeds to apply the results from this training set to a test set for which the results are unknown. Successful modeling hinges on the expectation that the data in the test set is sufficiently similar to that in the training set. But problems abound. For one thing, similarity is the eye of the beholder and what seems to be a reasonable criterion for assuming similarity may turn out to be irrelevant in the real world. Secondly, overfitting is a constant issue and results that look perfect for the training set can fail abysmally on the test set.But as the article notes, the problems go further and the devil's in the details. Modeling studies very rarely try to quantify the exact differences between the two sets and the error resulting from that difference. What's needed is an estimate of predictive uncertainty for single data points, something which is virtually non-existent. The article notes the seemingly obvious but often ignored fact when it says that "there must be something that distinguishes a new candidate compound from the molecules in the training set". This 'something' will often be a function of the data that was ignored when fitting the model to the training set. Outliers which were thrown out because they were...outliers might return with a vengeance in the form of a new set of compounds that are enriched in their particular properties which were ignored.But more fundamentally, the very nature of the model used to fit the training set may be severely compromised. In its simplest incarnation for instance, linear regression may be used to fit data points to a set of relationships that are inherently non-linear. In addition, descriptors (such as molecular properties supposedly related to biological activity) may not be independent. As the paper notes, "The tools are inadequate when the model is non-linear or the descriptors are correlated, and one of these conditions always holds when drug responses and biological activity are involved". This problem penetrates into every level of drug discovery modeling, from basic molecular level QSAR to higher-level clinical or toxicological modeling. Only a judicious and high-quality application of statistics, constant validation, and a willingness to wait (for publication, press releases etc.) before the entire analysis is available will preclude erroneous results from seeing the light of day.3. Data Curation: This is an issue that should be of enormous interest to not just modelers but to all kinds of chemical and biological scientists concerned about information accuracy. The well-known principle of Garbage-In Garbage Out (GIGO) is at work here. The bottom line is that there is an enormous amount of chemical data on the internet that is flawed. For instance there are cases where incorrect structures were inferred from correct names of compounds:"The structure of gallamine triethiodide is a good illustrative example where many major databases ended up containing the same mistaken datum. Until mid-2011, anyone relying on an internet search would have erroneously concluded that gallamine triethiodide is a tribasic amine. The error resulted from mis-parsing the common name at some point as meaning that the co... Read more »

  • December 19, 2011
  • 12:34 PM
  • 141 views

What’s in a Crab Stick? – Identifying the Fish in Your Food

by Arielle D. Ross in Salamander Hours

I had a lot of great experiences during my first year of university, even in my introductory biology classes. For example, I can remember listening to Dr. Steven Newmaster, a taxonomist who was hooked on plants, recount a story about going to a … Continue reading →... Read more »

  • December 13, 2011
  • 10:36 AM
  • 141 views

On reproducibility in modeling

by The Curious Wavefunction in The Curious Wavefunction

A recent issue of Science has an article discussing an issue that has been a constant headache for anyone involved with any kind of modeling in drug discovery - the lack of reproducibility in computational science. The author Roger Peng who is a biostatistician at Johns Hopkins talks about modeling standards in general but I think many of his caveats could apply to drug discovery modeling. The problem has been recognized for a few years now but there have been very few concerted efforts to address it. An old anecdote from my graduate advisor's research drives the point home. He wanted to replicate a protein-ligand docking study done with a compound so he contacted the scientist who had performed the study and processed the protein and ligand according to the former's protocol. He appropriately adjusted the parameters and ran the experiment. To his surprise he got a very different result. He repeated the protocol several times but consistently saw the wrong result. Finally he called up the original researcher. The two went over the protocol a few times and finally realized that the problem lay in a minor but overlooked detail - the two scientists were using slightly different versions of the modeling software. This wasn't even a new version, just an update, but for some reason it was enough to significantly change the results.These and other problems dot the landscape of modeling in drug discovery. The biggest problem to begin with is of course the sheer lack of reporting of details in modeling studies. I have seen more than my share of papers where the authors find it enough to simply state the name of the software used for modeling. No mention of parameters, versions, inputs, "pre-processing" steps, hardware, operating system, computer time or "expert" tweaking. The latter factor is crucial and I will come back to it. In any case, it's quite obvious that no modeling study can be reproducible without these details. Ironically, the same process that made modeling more accessible to the experimental masses has also encouraged the reporting of incomplete results; the incarnation of simulation as black-box technology has inspired experimentalists to widely use it, but on the flip side it has also discouraged many from being concerned about communicating under-the-hood details.A related problem is the lack of objective statistical validation in reporting modeling results, a very important topic that has been highlighted recently. Even when protocols are supposedly accurately described, the absence of error bars or statistical variation means that one can get a different result even if the original recipe is meticulously followed. Even simple things like docking runs can give slightly different numbers on the same system, so it's important to be mindful of variation in the results along with their probable causes. Feynman talked about the irreproducibility of individual experiments in quantum mechanics, and while it's not quite that bad in modeling, it's still not irrelevant.This brings us to one of those important but often unquantifiable factors in successful modeling campaigns - the role of expert knowledge and intuition. Since modeling is still an inexact science (and will probably remain so for the foreseeable future), intuition, gut feelings and a "feel" for the particular system under consideration based on experience can often be an important part of massaging the protocol to deliver the desired results. At least in some cases these intangibles are captured in any number of little tweaks, from constraining the geometry of certain parts of a molecule based on past knowledge to suddenly using a previously unexpected technique to improve the clarity of the data. A lot of this is never reported in papers and some of it probably can't be. But is there a way to capture and communicate at least the tangible part of this kind of thinking? The paper alludes to a possible simple solution and this solution will have to be implemented by journals. Any modeling protocol generates a log file which can be easily interpreted by the relevant program. In case of some modeling software like Schrodinger, there's also a script that records every step in a format comprehensible to the program. Almost any little tweak that you make is usually recorded in these files or scripts. A log file is more accurate than an English language description at documenting concrete steps. One can imagine a generic log file- generating program which can record the steps across different modeling programs. This kind of venture will need collaboration between different software companies but it could be very useful in providing a single log file that captures as much of both the tangible and intangible thought processes of the modeler as possible. Journals could insist that authors upload these log files and make them available to the community.Ultimately it's journals which can play the biggest role in the implementation of rigorous and useful modeling standards. In the Science article the author describes a very useful system of communicating modeling results used by the journal Biostatistics. Under this system authors doing simulation can request a "reproducibility review" in which one of the associate editors runs the protocols using the code supplied by the authors. Papers which pass this test are clearly flagged as "R" - reviewed for reproducibility. At the very least, this system gives readers a way to distinguish rigorously validated papers from others so that they know which ones to trust more. You would think that there would be backlash against the system from those who don't want to explicitly display the lack of verification of their protocols, but the fact that it's working seems to indicate its value to the community at large. Unfortunately in case of drug discovery, any such system will have to deal with the problem of proprietary data. There are several papers without such data which could also benefit from this system, but there can be ways to handle proprietary data. Even proprietary data can be amenable to partial reproducibility. In a typical example for instance, molecular structures which are proprietary could be encoded into special organization-specific formats that are hard to decode (an example would be formats used by OpenEye or Rosetta). One could still run a set of modeling protocols on this cryptic data set and generate statistics without revealing the identity of the structures. Naturally there will have to be safeguards against the misuse of any such evaluation but it's hard to see why they would be difficult to institute.Finally, it's only a community-wide effort equally comprised of industry and academia which can lead to the validation and use of successful modeling protocols. The article suggests creating a kind of "CodeMed Central" repository akin to PubMed Central, and I think modeling could greatly benefit from such a central data source. Code for successful protocols in virtual screening or homology modeling or molecular dynamics or what have you can be uploaded to a site (along with the log files of course). Not only would these protocols be used to verify their reproducibility, but they could also be used to practically aid data extraction from similar systems. The community as a whole would benefit. Before there's any data generation or sharing, before there's any drawing of conclusions, before there's any advancement of scientific knowledge, there's reproducibility, a scientific virtue that has guided every field of science since its modern origin. Sadly this virtue has been neglected in modeling, so it's about time that we pay more attention to it. Peng, R. (2011). Reproducible Research in Computational Science Science, 334 (6060), 1226-1227 DOI: ... Read more »

  • December 12, 2011
  • 10:09 AM
  • 603 views

The Beethoven connection

by Joerg Heber in All that matters

Symphonies are some of the most complex musical pieces. They involve different instruments, each with their own unique sound, and each instruments section playing their own tunes. Yet, what are symphonies in comparison to the complexity of life? Proteins for example, they are made of a limited number of building blocks, amino acids, but take [...]... Read more »

  • December 7, 2011
  • 08:50 PM
  • 148 views

Why drug design is like airplane design. And why it isn't.

by The Curious Wavefunction in The Curious Wavefunction

Air travel constitutes the safest mode of travel in the world today. What is even more impressive is the way airplanes are designed by modeling and simulation, sometimes before the actual prototype is built. In fact simulation has been a mainstay in the aeronautical industry for a long time and what seems like a tremendously complex interaction of metal, plastic and the unpredictable movements of air flow can now be reasonably captured in a computer model.In a recent paper, Walter Woltosz of Simulations Plus Inc. asks an interesting question: compared to the aeronautical industry where modeling has been applied to airplane design for decades, why has it taken so long for modeling to catch on in the pharmaceutical industry? In contrast to airplane design which is now a well-accepted and widely used tool, why is simulation of drugs and proteins still (relatively) in the doldrums? Much progress has surely been made in the field during the last thirty years or so, but modeling is nowhere as integrated in the drug discovery process as computational fluid dynamics is in the airplane design process.Woltosz has an interesting perspective on the topic since he himself was involved in modeling the early Space Shuttles. As he recounts, what's interesting about modeling in the aeronautical field is that NASA was extensively using primitive 70s computers to do it even before they built the real thing. A lot of modeling in aeronautics involves figuring out the right sequence of movements an aircraft should take in order to keep itself from breaking apart. Some of it involves solving the Navier-Stokes equations that dictate the complicated air flow around the plane, some of it involves studying the structural and directional effects of different kinds of loads on materials used for construction. The system may seem complicated but as Woltosz tells it, simulation is now used ubiquitously in the industry to discard bad models and tweak good ones.Compare that to the drug discovery field. The first simulations of pharmaceutically relevant systems started in the early 80s. Since then the field has progressed in fits and starts and while many advances have come in the last two decades, modeling approaches are not a seamless part of the process. Why the difference? Woltosz comes up with some intriguing reasons, some obvious and others more thought-provoking.1. First and foremost of course, biological systems are vastly more complicated than aeronautical systems. Derek has already written at length about the fallacy of applying engineering analogies to drug discovery and I would definitely recommend his thoughts on the topic. In case of modeling, I have already mentioned that the modeling community is getting ahead of itself by trying to chew on more complexity than it can bite. Firstly you need to have a list of parts to simulate and we are still very much in the process of putting together this list. Secondly, having the list will tell us little about how the parts interact. Biological systems display complex feedback loops, non-linear signal-response features and functional "cliffs" where a small change in the input can lead to a big change in the output. As Woltosz notes, while aeronautical systems can also be complex, their inputs are much more well-defined.But the real difference is that we can actually build an airplane to test our theories and simulations. The chemical analogy would be the synthesis of a complex molecule like a natural product to test the principles that went into planning its construction. In the golden age of organic synthesis, synthetic feats were undertaken for structure confirmation but also to validate our understanding of the principles of physical organic chemistry, conformational analysis and molecular reactivity. Even if we get to a point where we think we have a sound grounding of the principles governing the construction and workings of a cell, it's going to be a while before we can truly confirm those principles by building a working cell from scratch.2. Another interesting point concerns the training of drug discovery researchers. Woltosz is probably right that engineers are much more of generalists than pharmaceutical scientists who are usually rigidly divided into synthetic chemists, biologists, pharmacologists, modelers, process engineers etc. The drawback of this compartmentalization is something I have experienced myself as a modeler; scientists from different disciplines can mistrust each other and downplay the value of other disciplines in the discovery of a new drug. This is in spite of the fact that drug discovery is an inherently complex and multidisciplinary process which can only benefit from an eclectic mix of backgrounds and approaches. A related problem is that some bench chemists, even those who respect modeling, want modeling to provide answers, but they don't want to run experiments (such as negative controls) which can advance the state of the field. They are reluctant to carry out the kind of basic measurements (such as measuring solvation energies of simple organic molecules) which would be enormously valuable in benchmarking modeling techniques. A lot of this is unfortunate since it's experimentalists themselves who are going to ultimately benefit from highly validated computational approaches.There's another point which Woltosz does not mention but which I think is quite important. Unlike chemists, engineers are usually more naturally inclined to learn programming and mathematical modeling. Most engineers I know know at least some programming. Even if they don't extensively write code they can still use Matlab or Mathematica, and this is independent of their specialty (mechanical, civil, electrical etc.). But you would be hard-pressed to find a synthetic organic chemist with programming skills. Also, since engineering is inherently a more mathematically oriented discipline, you would expect an engineer to be more open to exploring simulation even if he doesn't do it himself. It's more about the culture than anything else. That might explain the enthusiasm of early NASA engineers to plunge readily into simulation. The closest chemical analog to a NASA engineer would be a physical chemist, especially a mathematically inclined quantum chemist who may have used computational techniques even in the 70s, but how many quantum chemists (as compared to synthetic chemists for instance) work in the pharmaceutical industry? The lesson to be drawn here is that programming, simulation and better mathematical grounding need to be more widely integrated in the traditional education of chemists of all stripes, especially those inclined toward the life sciences.3. The third point that Woltosz makes concerns the existence of a comprehensive knowledge base for validating modeling techniques and he thinks that a pretty good knowledge base exists today upon which we can build useful modeling tools. I am not so sure. Woltosz is mainly talking about physiological data and while that's certainly valuable, the problem exists even at much simpler levels. I would like to stress again that even simple physicochemical measurements of parameters such as solvation energies which can contribute to benchmarking modeling algorithms are largely missing, mainly because they are unglamorous and underfunded. On the bright side, there have been at least some areas like virtual screening where researchers have judiciously put together robust datasets for testing their methods. But there's a long way to go and much robust basic scientific experimental data needs to be gathered. Again, this can come about only if scientists from other fields recognize the potential long-term value that modeling can bring to drug discovery and contribute to its advancement.Woltosz's analogy of drug design and airplane design also reminds me of something that Freeman Dyson once wrote about the history of flight. In "Imagined Worlds", Dyson described the whole history of flight as a process of Darwinian evolution in which many designs (and lives) were destroyed in the service of better ones. Perhaps we also need a merciless process of Darwinian evaluation in modeling. Some of this is already taking place in the field of protein modeling field with CASP and in protein-ligand modeling with SAMPL, but the fact remains that the drug discovery community as a whole (and not just modelers) will have to descend o... Read more »

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