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Table of Contents (PDF) August 1, 2017 u vol. 114 u no. 31 From the Cover 8325 Mimicry and sexual selection E6437 Face processing in deaf individuals 8163 Hydrogel-based supramolecular fibers 8193 Dynamics in amorphous ices 8253 Protein folding via defined pathways Contents THIS WEEK IN PNAS Cover image: Pictured are Heliconius 8125 In This Issue numata butterflies mating. Populations of this species display diverse wing-pattern forms that mimic other LETTERS (ONLINE ONLY) local species, providing varying degrees E6271 Statistical reanalysis of natural products reveals increasing chemical diversity of protection against predation. Mathieu Michael A. Skinnider and Nathan A. Magarvey Chouteau et al. found that the E6273 Reply to Skinnider and Magarvey: Rates of novel natural product discovery ’ butterflies mating behavior favors remain high pairing between dissimilar forms, Cameron R. Pye, Matthew J. Bertin, R. Scott Lokey, William H. Gerwick, and Roger G. Linington thereby maintaining wing-pattern diversity in the face of selection by E6274 Overfishing causes frequent fish population collapses but rare extinctions predators for the most protective form. Olivier Le Pape, Sylvain Bonhommeau, Anne-Elise Nieblas, and Jean-Marc Fromentin See the article by Chouteau et al. on E6275 Reply to Le Pape et al.: Management is key to preventing marine extinctions pages 8325–8329. Image courtesy of Matthew G. Burgess, Alexa Fredston-Hermann, Malin L. Pinsky, Steven D. Gaines, Mathieu Chouteau. and David Tilman OPINION—Leading scientists discuss current issues 8127 Finding the plot in science storytelling in hopes of enhancing science communication Susana Martinez-Conde and Stephen L. Macknik QNAS 8130 QnAs with Liqun Luo Paul Gabrielsen See Inaugural Article on page 7505 in issue 29 of volume 114 PROFILE 8132 Profile of Christine Petit Tinsley H. Davis See Inaugural Article on page 7765 in issue 30 of volume 114 COMMENTARIES 8135 Whether the hearing brain hears it or the deaf brain sees it, it’s just the same Marcin Szwed, Łukasz Bola, and Maria Zimmermann See companion article on page E6437 Free online through the PNAS open access option. PNAS u August 1, 2017 u vol. 114 u no. 31 u iii–vii Downloaded by guest on September 28, 2021 8138 Designing toughness and strength for soft materials PHYSICS Xuanhe Zhao 8193 Diffusive dynamics during the high-to-low density See companion article on page 8163 transition in amorphous ice 8141 Which way to low-density liquid water? Fivos Perakis, Katrin Amann-Winkel, Felix Lehmku¨hler, Michael Sprung, Daniel Mariedahl, Jonas A. Sellberg, Harshad Pathak, Francesco Sciortino Alexander Spa¨h, Filippo Cavalca, Daniel Schlesinger, See companion article on page 8193 Alessandro Ricci, Avni Jain, Bernhard Massani, Flora Aubree, Chris J. Benmore, Thomas Loerting, Gerhard Gru¨bel, Lars G. M. Pettersson, and Anders Nilsson PNAS PLUS See Commentary on page 8141 8144 Significance Statements Brief statements written by the authors about the significance of their papers. SOCIAL SCIENCES PSYCHOLOGICAL AND COGNITIVE SCIENCES PERSPECTIVE 8199 Infants possess an abstract expectation of 8148 On the promotion of human flourishing ingroup support Tyler J. VanderWeele Kyong-sun Jin and Rene´e Baillargeon 8420 Support for redistribution is shaped by compassion, envy, and self-interest, but not a taste for fairness PHYSICAL SCIENCES Daniel Sznycer, Maria Florencia Lopez Seal, Aaron Sell, Julian Lim, Roni Porat, Shaul Shalvi, Eran Halperin, Leda Cosmides, APPLIED MATHEMATICS and John Tooby E6277 Evaluating optimal therapy robustness by virtual expansion of a sample population, with a case SUSTAINABILITY SCIENCE study in cancer immunotherapy 8301 Global analysis of depletion and recovery of seabed Syndi Barish, Michael F. Ochs, Eduardo D. Sontag, biota after bottom trawling disturbance and Jana L. Gevertz Jan Geert Hiddink, Simon Jennings, Marija Sciberras, Claire L. Szostek, Kathryn M. Hughes, Nick Ellis, Adriaan D. Rijnsdorp, BIOPHYSICS AND COMPUTATIONAL BIOLOGY Robert A. McConnaughey, Tessa Mazor, Ray Hilborn, Jeremy S. 8157 Activation and synchronization of the oscillatory Collie, C. Roland Pitcher, Ricardo O. Amoroso, Ana M. Parma, Petri Suuronen, and Michel J. Kaiser morphodynamics in multicellular monolayer Shao-Zhen Lin, Bo Li, Ganhui Lan, and Xi-Qiao Feng BIOLOGICAL SCIENCES CHEMISTRY 8163 Bioinspired supramolecular fibers drawn from ANTHROPOLOGY a multiphase self-assembled hydrogel 8205 Accurate age estimation in small-scale societies Yuchao Wu, Darshil U. Shah, Chenyan Liu, Ziyi Yu, Ji Liu, Xiaohe Yoan Diekmann, Daniel Smith, Pascale Gerbault, Mark Dyble, Ren, Matthew J. Rowland, Chris Abell, Michael H. Ramage, Abigail E. Page, Nikhil Chaudhary, Andrea Bamberg Migliano, and Oren A. Scherman and Mark G. Thomas See Commentary on page 8138 BIOCHEMISTRY COMPUTER SCIENCES E6287 Local destabilization, rigid body, and fuzzy docking 8247 De novo peptide sequencing by deep learning facilitate the phosphorylation of the transcription Ngoc Hieu Tran, Xianglilan Zhang, Lei Xin, Baozhen Shan, factor Ets-1 by the mitogen-activated protein and Ming Li kinase ERK2 Andrea Piserchio, Mangalika Warthaka, Tamer S. Kaoud, Kari EARTH, ATMOSPHERIC, AND PLANETARY SCIENCES Callaway, Kevin N. Dalby, and Ranajeet Ghose 8169 Reassessing the atmospheric oxidation mechanism E6297 Identification of a vesicular ATP release inhibitor of toluene for the treatment of neuropathic and Yuemeng Ji, Jun Zhao, Hajime Terazono, Kentaro Misawa, inflammatory pain Nicholas P. Levitt, Yixin Li, Yun Lin, Jianfei Peng, Yuan Wang, Yuri Kato, Miki Hiasa, Reiko Ichikawa, Nao Hasuzawa, Lian Duan, Bowen Pan, Fang Zhang, Xidan Feng, Taicheng An, Atsushi Kadowaki, Ken Iwatsuki, Kazuhiro Shima, Yasuo Endo, Wilmarie Marrero-Ortiz, Jeremiah Secrest, Annie L. Zhang, Yoshiro Kitahara, Tsuyoshi Inoue, Masatoshi Nomura, Hiroshi Kazuhiko Shibuya, Mario J. Molina, and Renyi Zhang Omote, Yoshinori Moriyama, and Takaaki Miyaji 8175 Catalysis and chemical mechanisms of calcite E6306 Effect of directional pulling on mechanical protein dissolution in seawater degradation by ATP-dependent proteolytic machines Adam V. Subhas, Jess F. Adkins, Nick E. Rollins, John Naviaux, Adrian O. Olivares, Hema Chandra Kotamarthi, Benjamin J. Jonathan Erez, and William M. Berelson Stein, Robert T. Sauer, and Tania A. Baker 8181 Thermodynamic constraint on the depth of the global 8211 X-ray crystal structure of a reiterative transcription tropospheric circulation complex reveals an atypical RNA extension pathway David W. J. Thompson, Sandrine Bony, and Ying Li Katsuhiko S. Murakami, Yeonoh Shin, Charles L. Turnbough Jr., 8187 Dynamic fluid connectivity during steady-state and Vadim Molodtsov multiphase flow in a sandstone 8217 Nitric oxide is an obligate bacterial nitrification Catriona A. Reynolds, Hannah Menke, Matthew Andrew, intermediate produced by hydroxylamine oxidoreductase Martin J. Blunt, and Samuel Krevor Jonathan D. Caranto and Kyle M. Lancaster iv u www.pnas.org Contents Downloaded by guest on September 28, 2021 8223 Structural insights into the extracellular recognition of 8277 MitoNEET-dependent formation of the human serotonin 2B receptor by an antibody intermitochondrial junctions Andrii Ishchenko, Daniel Wacker, Mili Kapoor, Ai Zhang, Gye Alexandre Vernay, Anna Marchetti, Ayman Sabra, Tania N. Won Han, Shibom Basu, Nilkanth Patel, Marc Messerschmidt, Jauslin, Manon Rosselin, Philipp E. Scherer, Nicolas Demaurex, Uwe Weierstall, Wei Liu, Vsevolod Katritch, Bryan L. Roth, Lelio Orci, and Pierre Cosson Raymond C. Stevens, and Vadim Cherezov 8283 Cytosolic interaction of type III human CD38 with CIB1 8229 Methylcytosine dioxygenase TET3 interacts with modulates cellular cyclic ADP-ribose levels thyroid hormone nuclear receptors and stabilizes Jun Liu, Yong Juan Zhao, Wan Hua Li, Yun Nan Hou, Ting Li, Zhi their association to chromatin Ying Zhao, Cheng Fang, Song Lu Li, and Hon Cheung Lee Wenyue Guan, Romain Guyot, Jacques Samarut, Fre´de´ric Flamant, Jiemin Wong, and Karine Ce´cile Gauthier DEVELOPMENTAL BIOLOGY 8235 Molecular mechanism of environmental D-xylose E6352 Conserved gene regulatory module specifies lateral perception by a XylFII-LytS complex in bacteria neural borders across bilaterians Jianxu Li, Chengyuan Wang, Gaohua Yang, Zhe Sun, Hui Guo, Yongbin Li, Di Zhao, Takeo Horie, Geng Chen, Hongcun Bao, Kai Shao, Yang Gu, Weihong Jiang, and Peng Zhang Siyu Chen, Weihong Liu, Ryoko Horie, Tao Liang, Biyu Dong, 8241 Potent competitive inhibition of human ribonucleotide Qianqian Feng, Qinghua Tao, and Xiao Liu reductase by a nonnucleoside small molecule 8289 Distinct requirements for energy metabolism in mouse Md. Faiz Ahmad, Intekhab Alam, Sarah E. Huff, John Pink, primordial germ cells and their reprogramming to Sheryl A. Flanagan, Donna Shewach, Tessianna A. Misko, embryonic germ cells Nancy L. Oleinick, William E. Harte, Rajesh Viswanathan, Yohei Hayashi, Kei Otsuka, Masayuki Ebina, Kaori Igarashi, Michael E. Harris, and Chris Godfrey Dealwis Asuka Takehara, Mitsuyo Matsumoto, Akio Kanai, Kazuhiko Igarashi, Tomoyoshi Soga, and Yasuhisa Matsui BIOPHYSICS AND COMPUTATIONAL BIOLOGY 8295 Broadly expressed repressors integrate patterning E6314 Symmetry-related proton transfer pathways in across orthogonal axes in embryos respiratory complex I Theodora Koromila and Angelike Stathopoulos Andrea Di Luca, Ana P. Gamiz-Hernandez, and Ville R. I. Kaila E6322 Sequential eviction of crowded nucleoprotein ECOLOGY complexes by the exonuclease RecBCD 8301 Global analysis of depletion and recovery of seabed molecular
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