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The scientific work of Tom Baden

Tom Baden
Image Tom Baden

State of the art

A dominant research effort today gears towards the century-old dream of understanding the nervous system as a whole. How are networks consisting of anatomically and functionally distinct neuronal elements adapted to sample, filter and forward information contained in a sensory stimulus or in central neuronal ensemble activity towards their specific computational goals? Faced with the staggering complexity of even the simplest neuronal circuits, addressing such questions continues to present a daunting task. I believe that one very promising approach will lie in promoting our understanding of computations performed by specific, very well described neuronal ensembles with a clear function, input-output organization and experimental accessibility, such as the vertebrate retina.

The retina is a beautiful neural circuit, and presents a powerful model system to study many general aspects of neuronal network computation, including sampling optimization, filtering as well as compression of the incoming stream of visual information into highly selective parallel streams towards transmission to the brain [1-3]. First, the retina operates almost exclusively as a feed-forward network, receiving little or no fast feedback from the brain. Accordingly, great control can be maintained over network input (the visual stimulus) while retinal output is readily recorded in single unit or population measurements of retinal ganglion cells (RGCs), the retina's output neurons. Second, the anatomical basis of the retina, particularly in mouse, is amongst the most well-described 'complete' networks in vertebrates, with ready availability of specific transgenic mouse lines and molecular markers. Third, individual retinal microcircuits tile the retinal surface, such that the same computations are effectively performed at every retinal position - this specific organizational motif greatly reduces the parameter space that needs to be explored when aiming to complement our understanding of retinal networks using computational models. Indeed, it is often possible to derive comparatively simple models of computations performed by individual microcircuits that capture the vast majority of the variance observed even when presenting complex visual stimuli [3-5]. Taken together, I believe that the vertebrate retina may be one of the very few model systems in neuroscience today that promises to hold a complete functional understanding within arm's reach. In my research I therefore focus on two general questions: What information about the visual scene is encoded by different retinal output channels (RGCs) and how are these channels built from the limited computational building blocks represented in inner retinal synaptic interactions?

Comparison of analogue to digital conversion in different sensory systems. Visual systems of both vertebrates and invertebrates perform extensive processing already in the periphery, with many subtypes of respective 1st order interneurons (bipolar cells / monopolar cells) generating a mixture of analogue (graded) and digital (spiking) responses. From Baden et al. 2013 TiNS
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Left: Bipolar cell labelled with the synthetic calcium indicator Oregon Green BAPTA-1. Right: responses of different mouse bipolar cells to full field visual stimulation. From Baden et al. Curr Biol 2013.
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My research

Left: Somata of 600 RGC-Layer cells stained with OGB-1. Middle: Reponses to different aspects of a full field stimuli (top) and Right: merged. The different colouration of individual cells indicates different feature selectivity. From Baden, Berens et al. (under preparation).
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The mouse retina is divided, with dorsal “M“ (green) cones sampling light from the ground, but ventral “S“ (UV) cones sampling light in the sky. Top: “mouse view“ and “human view“ of a woodland scene estimated with a custom built hyperpectral scanner. Bottom left: Distribution of S-band contrasts in the sky and M-band contrasts on the ground. S-band sky contrasts show a “dark“ bias. Bottom right: Light evoked calcium responses to a sinusoidal stimulus measured in populations of functional M- and S-cones. S-, but not M-cones exhibit a clear preference for dark stimuli, matching natural contrast distribution. From Baden*, Schubert* et al., Neuron (in press)
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During my PhD (lab of B Hedwig, Zoology, Cambridge, UK) I studied auditory processing in crickets and bushcrickets in vivo, using a combination of single unit electrophysiological and optical imaging techniques and behaviour [6-9]. The auditory mate finding behaviour in crickets is a powerful model system allowing to unravel a specific, complex behaviour at the level of individually identified neurons, or smaller still, at the level of axonal and dendritic processing. It was during this time that I was first exposed to the idea that a complete neuronal sensory-motor circuit only a handful of neurons underlying such a complex behaviour could in principle be 'completely' understood from a computational perspective.

I then switched to retina research (lab of L Lagnado, MRC-LMB, Cambridge, UK) for a two year post doc. Here I studied visual coding in single and populations of fish retinal bipolar cells using optical imaging and electrophysiology, both in vivo and in retinal slice. In addition I developed computational models of visual coding and synaptic function in the inner retina. Part of this work led to the first description of the widespread presence of active voltage spikes encoding light in bipolar cells [10-12], which traditionally had been considered purely graded neurons. Other work looked more specifically at synaptic transfer functions in the context of visual coding [13].

In 2010 I joined the lab of T Euler (CIN/BCCN Tübingen, Germany) where I am involved in a range of projects exploring principles of population coding at different processing stages in the mouse (Photoreceptors, bipolar cells, RGCs). To this end we have developed techniques to optically monitor light evoked calcium changes in any neuron of the retina's vertical cone-pathway in retinal slice and/or 'wholemount' explants, based on bulk electroporation of synthetic calcium indicators [14] as well as transgenic animals, with perspective to also establish viral transfection strategies. Based on our methods catalogue we have already generated the first functional fingerprint of temporal channels described by bipolar cell axonal terminals [15] and identified strategies for sampling optimization of natural stimuli by the mouse cone photoreceptor array [16]. Moreover, we are working on principles of dendritic computation by RGCs (K Franke, CIN Tübingen), and together with R Smith, UPenn and RW Taylor, OHSU/Portland we continue working on synaptic processing by the axonal system of bipolar cells. In collaboration with the P Berens and M Bethge (BCCN Tübingen) we now focus on generating the first complete functional map of all RGC channels in the mouse retina, an approach that I believe will greatly advance the field towards a complete computational understanding of key principles that govern early visual processing in vertebrates.

Personal webpage:

Neuroscience education in the developing world: TReND in Africa

Outside my research work I co-founded a not-for-profit organisation “TReND in Africa” together with Lucia Prieto Godino (UNIL, CH). TReND is dedicated to foster neuroscience education and research in the region, and we currently count >20 volunteer researchers on three continents, working together to bring state of the art equipment and knowledge to the African university landscape. We run a number of projects, including annual neuroscience summer schools, collection and shipping of equipment donations, outreach events at local schools or a range of online services all around the brain. We also support the establishment of the 1st MSc Neuroscience degree in East Africa at Kampala International University, Uganda. Finally, we recently launched an academic volunteering programme for young PostDocs to join African Universities for short term contracts.

For more information, please visit our website at

TReND in Africa – Fostering Neuroscience Education and Research on the African continent.
TReND activities at Kampala International University, Uganda. Top left: preparing a housefly (Calliphora) for single unit tangential cell recordings. Top right: group photo of students and faculty of the 1st IBRO school of Insect Neuroscience and Drosophila Neurogenetics, KIU Uganda, 2012. Bottom left: Field work, finding wild Drosophila amidst matooke plantations. Bottom right: Loading a gel during molecular biology sessions. Visit TReND website:
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  1. Masland, R.H. (2001) The fundamental plan of the retina. Nat Neurosci 4, 877-886
  2. Wässle, H. (2004) Parallel processing in the mammalian retina. Nat Rev Neurosci 5, 747-757
  3. Gollisch, T. and Meister, M. (2010) Eye smarter than scientists believed: neural computations in circuits of the retina. Neuron 65, 150-164
  4. Meister, M. and Berry, M.J., 2nd (1999) The neural code of the retina. Neuron 22, 435-450
  5. Schwartz, G.W., et al. (2012) The spatial structure of a nonlinear receptive field. Nature neuroscience 15, 1572-1580
  6. Baden, T. and Hedwig, B. (2007) Neurite-specific Ca2+ dynamics underlying sound processing in an auditory interneurone. Developmental neurobiology 67, 68-80
  7. Baden, T. and Hedwig, B. (2008) Front leg movements and tibial motoneurons underlying auditory steering in the cricket (Gryllus bimaculatus deGeer). The Journal of experimental biology 211, 2123-2133
  8. Baden, T. and Hedwig, B. (2009) Dynamics of free intracellular Ca2+ during synaptic and spike activity of cricket tibial motoneurons. The European journal of neuroscience 29, 1357-1368
  9. Baden, T. and Hedwig, B. (2010) Primary afferent depolarization and frequency processing in auditory afferents. The Journal of neuroscience : the official journal of the Society for Neuroscience 30, 14862-14869
  10. Baden, T., et al. (2011) Spikes in Retinal Bipolar Cells Phase-Lock to Visual Stimuli with Millisecond Precision. Curr Biol.
  11. Dreosti, E., et al. (2011) In vivo evidence that retinal bipolar cells generate spikes modulated by light. Nature neuroscience 14, 951-952
  12. Baden, T., et al. (2013) Spikes and ribbon synapses in early vision. Trends in neurosciences
  13. Baden, T., Nikolaev A. et al. (submitted) A synaptic mechanism for multiplexing fast and slow visual signals.  
  14. Briggman, K.L. and Euler, T. (2011) Bulk electroporation and population calcium imaging in the adult mammalian retina. Journal of neurophysiology 105, 2601-2609
  15. Baden, T., et al. (2013) Spikes in Mammalian bipolar cells support temporal layering of the inner retina. Curr Biol 23, 48-52
  16. Baden, T., Schubert T. et al. Beyond Colour vision: Dichromacy provides for near optimal sampling of natural contrast statistics. Neuron (in press)

Tom Baden

Post Doctoral Reseracher, Ph. D. cantab.

Phone: +49 (0)7071 29-84749
E-mail: thomas.baden[at]

Werner Reichardt Centre for Integrative Neuroscience (CIN)

Institute for Ophthalmic Research
University of Tübingen

Otfried-Müller-Str. 25
D-72076 Tübingen,