1 00:00:01,000 --> 00:00:02,000 Complexity. 2 00:00:02,000 --> 00:00:05,000 Nothing quite embodies the word like the human brain. 3 00:00:05,000 --> 00:00:10,000 So for centuries we've studied the complexity of the human brain 4 00:00:10,000 --> 00:00:13,000 using the tools and technology of the day. 5 00:00:13,000 --> 00:00:16,000 If that's pen and paper from the age of da Vinci 6 00:00:16,000 --> 00:00:18,000 through advents in microscopy 7 00:00:18,000 --> 00:00:21,000 to be able to look more deeply into the brain 8 00:00:21,000 --> 00:00:25,000 to a lot of the new technologies that you've heard about today 9 00:00:25,000 --> 00:00:28,000 through imaging, magnetic resonance imaging, 10 00:00:28,000 --> 00:00:31,000 able to look a the details of the brain. 11 00:00:31,000 --> 00:00:35,000 Now one of the first things you notice when you look 12 00:00:35,000 --> 00:00:38,000 at a fresh human brain is the amount of vasculatur 13 00:00:38,000 --> 00:00:40,000 that's completely covering this. 14 00:00:40,000 --> 00:00:44,000 The brain is this metabolically voracious organ. 15 00:00:44,000 --> 00:00:47,000 Approximately a quarter of the oxygen in your blood, 16 00:00:47,000 --> 00:00:51,000 approximately a fifth of the glucose in your blood 17 00:00:51,000 --> 00:00:53,000 is being used by this organ. 18 00:00:53,000 --> 00:00:57,000 It's so metabolically active there's a waste stream which comes out 19 00:00:57,000 --> 00:01:02,000 into your cervical spinal fluid. You generate 0.5 liter of CSF every day. 20 00:01:02,000 --> 00:01:06,000 So, as you know, researchers have taken advantage 21 00:01:06,000 --> 00:01:10,000 of this massive amount of blood flow and metabolic activity 22 00:01:10,000 --> 00:01:15,000 to begin to map regions of the brain, to functionally annotate the brain 23 00:01:15,000 --> 00:01:16,000 in very meaningful ways. 24 00:01:16,000 --> 00:01:20,000 You'll hear a lot more about those kinds of studies, 25 00:01:20,000 --> 00:01:25,000 but basically taking advantage of the fact that there's active metabolism 26 00:01:25,000 --> 00:01:27,000 with certain tasks going on. 27 00:01:27,000 --> 00:01:31,000 You can put a living human in a machine and you can see various areas 28 00:01:31,000 --> 00:01:33,000 that are lighting up. 29 00:01:33,000 --> 00:01:37,000 For example, going around right now is the temporal cortex auditory 30 00:01:37,000 --> 00:01:41,000 processing going on there, you're listening to my words, 31 00:01:41,000 --> 00:01:44,000 you're processing what I'm saying. 32 00:01:44,000 --> 00:01:48,000 Moving to the front of this brain is your prefontal cortex, 33 00:01:48,000 --> 00:01:50,000 your executive decision-making, 34 00:01:50,000 --> 00:01:53,000 your higher-thinking areas of the brain. 35 00:01:53,000 --> 00:01:56,000 And so the thing that we're very much interested in 36 00:01:56,000 --> 00:01:59,000 from the perspective of the Allen Institute 37 00:01:59,000 --> 00:02:03,000 is to go deeper, to get down to the cellular level. 38 00:02:03,000 --> 00:02:08,000 So when you look at this slice, it doesn't really look like gray matter, does it? 39 00:02:08,000 --> 00:02:11,000 It's more tan matter, or beige matter. 40 00:02:11,000 --> 00:02:14,000 And scientists about, I guess, around the late 1800's 41 00:02:14,000 --> 00:02:18,000 discovered that they could stain tissue in various ways, 42 00:02:18,000 --> 00:02:23,000 and this sort of came along with various microscopy techniques. 43 00:02:23,000 --> 00:02:27,000 And so this is a stain, it's called Nissl, and it stains cell bodies, 44 00:02:27,000 --> 00:02:30,000 it stains the cell bodies purple. 45 00:02:30,000 --> 00:02:33,000 And so you can see a lot more structure and texture 46 00:02:33,000 --> 00:02:36,000 when you look at something like this. 47 00:02:36,000 --> 00:02:40,000 You can see the outer layers of the brain and the neocortex, 48 00:02:40,000 --> 00:02:45,000 there's a six-layer structure, arguably what makes us most uniquely human. 49 00:02:45,000 --> 00:02:49,000 As you've heard before about there's on average in a human 50 00:02:49,000 --> 00:02:53,000 there's about 86 billion neurons and those 86 billion neurons 51 00:02:53,000 --> 00:02:59,000 you can see are not evenly distributed, they're very focused and specific structures. 52 00:02:59,000 --> 00:03:02,000 And each of them has their own specific function 53 00:03:02,000 --> 00:03:06,000 both on an anatomic level and at a cellular level. 54 00:03:06,000 --> 00:03:10,000 So if we zoom in on these cells, what you can see is large cells 55 00:03:10,000 --> 00:03:14,000 and small support cells that are glias and astrocytes 56 00:03:14,000 --> 00:03:19,000 and these cells are as we know connected in a variety of different ways. 57 00:03:22,000 --> 00:03:26,000 And we like to think about although there's 86 billion cells, 58 00:03:26,000 --> 00:03:31,000 each cell might be considered a snowflake, they're actually able to be binned 59 00:03:31,000 --> 00:03:34,000 into a large number of cell types or classes. 60 00:03:34,000 --> 00:03:38,000 What flavor of activity that particular cell class has 61 00:03:38,000 --> 00:03:42,000 is driven by the underlying genes that are turned on in that cell, 62 00:03:42,000 --> 00:03:47,000 those drive protein expression which guide the function of those cells, 63 00:03:47,000 --> 00:03:51,000 who they're connected to, what their morphology is 64 00:03:51,000 --> 00:03:55,000 and we're very much interested in understanding these cell classes. 65 00:03:55,000 --> 00:03:57,000 So how do we do that? 66 00:03:57,000 --> 00:04:00,000 Well, we look inside the cell at the nucleus, 67 00:04:00,000 --> 00:04:02,000 and it will get to the nucleus, 68 00:04:02,000 --> 00:04:05,000 and so inside we've got 23 pairs of chromosomes, 69 00:04:05,000 --> 00:04:08,000 we've got a pair from mom, a pair from dad, 70 00:04:11,000 --> 00:04:17,000 on those chromosomes about 25000 genes and we're very much again interested in 71 00:04:17,000 --> 00:04:19,000 understanding which of these 25000 genes 72 00:04:19,000 --> 00:04:23,000 are turned on and at what levels they're turned on. 73 00:04:23,000 --> 00:04:28,000 Those are going of course to drive the underlying biochemistry of the cells 74 00:04:28,000 --> 00:04:33,000 they're turned on in and again every cell in our bodies more or less has these 75 00:04:33,000 --> 00:04:35,000 and we want to understand better 76 00:04:35,000 --> 00:04:39,000 what the driving biochemistry driven by our genome is. 77 00:04:39,000 --> 00:04:41,000 So how do we do that? 78 00:04:41,000 --> 00:04:44,000 We're going to deconstruct a brain in several easy steps. 79 00:04:44,000 --> 00:04:47,000 So we start at a medical examiner's office. 80 00:04:47,000 --> 00:04:51,000 This is a place where the dead are brought in 81 00:04:51,000 --> 00:04:52,000 and obviously it's useful, 82 00:04:52,000 --> 00:04:56,000 for the kind of work we do is not non-invasive, 83 00:04:56,000 --> 00:04:59,000 we actually need to obtain fresh brain tissue 84 00:04:59,000 --> 00:05:04,000 and we need to obtain it within 24 hours because the tissues start to degrade. 85 00:05:04,000 --> 00:05:06,000 We also wanted for our projects304306.1 86 00:05:06,000 --> 00:05:10,000 to have normal tissue as much normal as we could possibly get. 87 00:05:10,000 --> 00:05:15,000 So over the course of a two- or three-year collection time window 88 00:05:15,000 --> 00:05:20,000 we collected 6 very high-quality brains, 5 of them were male, one was female, 89 00:05:20,000 --> 00:05:24,000 That's only because males tend to die untimely deaths 90 00:05:24,000 --> 00:05:28,000 more frequently than females and then to add to that females 91 00:05:28,000 --> 00:05:33,000 are much more likely to give consent for us to take the brain than vice versa. 92 00:05:33,000 --> 00:05:35,000 We have to figure that one out. 93 00:05:35,000 --> 00:05:39,000 We've heard people say, “He wasn't using it anyway!” 94 00:05:39,000 --> 00:05:43,000 So, once the brain comes in we have to move very, very quickly. 95 00:05:43,000 --> 00:05:47,000 So first we capture a magnetic resonance image. 96 00:05:47,000 --> 00:05:50,000 This, of course, will look very familiar to you, 97 00:05:50,000 --> 00:05:55,000 but this is going to be the structure in which we hang all of this information, 98 00:05:55,000 --> 00:06:00,000 it's also a common coordinate framework by which the many, many researchers 99 00:06:00,000 --> 00:06:02,000 who do imaging studies can map 100 00:06:02,000 --> 00:06:06,000 into our ultimate database, an Atlas framework. 101 00:06:06,000 --> 00:06:08,000 We also collect diffusion tensor images 102 00:06:08,000 --> 00:06:12,000 so we get some of the wiring from these brains 103 00:06:12,000 --> 00:06:16,000 and then the brain is removed from the skull. It's slabbed and frozen, 104 00:06:16,000 --> 00:06:20,000 frozen solid, and then it's shipped to Seattle 105 00:06:20,000 --> 00:06:23,000 where we have the Allen Institute for Brain Science. 106 00:06:23,000 --> 00:06:26,000 We have great technicians who've worked out 107 00:06:26,000 --> 00:06:29,000 a lot of great techniques for further processing. 108 00:06:29,000 --> 00:06:34,000 So first, we take a very thin section, this is 25µm thin section, 109 00:06:34,000 --> 00:06:36,000 which is about a baby's hair width. 110 00:06:36,000 --> 00:06:41,000 That's transferred to a microscope slide and then that is stained 111 00:06:41,000 --> 00:06:45,000 with one of those histological stains that I talked about before. 112 00:06:45,000 --> 00:06:50,000 And this is going to give us more contrast as our team of anatomists 113 00:06:50,000 --> 00:06:52,000 start to make assignments of anatomy. 114 00:06:52,000 --> 00:06:54,000 So we digitize these images, 115 00:06:54,000 --> 00:06:58,000 everything goes from being wet lab to being dry lab. 116 00:06:58,000 --> 00:07:04,000 And then combined with anatomy that we get from the MR we further fragment the brain. 117 00:07:04,000 --> 00:07:08,000 This is to get it into a smaller framework for which we can do this. 118 00:07:08,000 --> 00:07:12,000 So here's a technician who's doing additional cutting. 119 00:07:12,000 --> 00:07:14,000 This is again a 25µm thin section. 120 00:07:14,000 --> 00:07:20,000 You'll see da Vinci's tools, the paintbrush, being use here to smooth this out. 121 00:07:20,000 --> 00:07:22,000 This is fresh frozen brain tissue. 122 00:07:22,000 --> 00:07:26,000 And it can be very carefully melted to a microscope slide. 123 00:07:26,000 --> 00:07:29,000 You'll note that there's a barcode on the slide. 124 00:07:29,000 --> 00:07:32,000 We process 1000's and 1000's of samples, 125 00:07:32,000 --> 00:07:36,000 we track all of it in a backend information management system. 126 00:07:36,000 --> 00:07:38,000 Those are stained. 127 00:07:38,000 --> 00:07:41,000 And then we get more detailed anatomic information. 128 00:07:41,000 --> 00:07:46,000 That information is, playing here, this is a laser capture microscope, 129 00:07:46,000 --> 00:07:50,000 the lab technician is actually describing an area on that slide. 130 00:07:50,000 --> 00:07:54,000 And a laser, you see the blue light cutting around there, 131 00:07:54,000 --> 00:07:56,000 very James Bond like. 132 00:07:56,000 --> 00:07:59,000 Cutting out part of that, and underneath there, 133 00:07:59,000 --> 00:08:04,000 you can see the blue light again, from the microscope in real-time. 134 00:08:04,000 --> 00:08:07,000 It's collecting in a microscope tube that tissue. 135 00:08:07,000 --> 00:08:08,000 We extract RNA, 136 00:08:08,000 --> 00:08:12,000 RNA is the product of the genes that are being turned on, 137 00:08:12,000 --> 00:08:15,000 and we label it, we put a fluorescent tag on it. 138 00:08:15,000 --> 00:08:21,000 Now what you are looking at here is a constellation of the entire human genome 139 00:08:21,000 --> 00:08:23,000 spread out over a glass slide. 140 00:08:23,000 --> 00:08:26,000 Those little bits are representing the 25000 genes. 141 00:08:26,000 --> 00:08:31,000 There's about 60000 of these spots and that fluorescently labeled RNA 142 00:08:31,000 --> 00:08:36,000 is put onto this microscope slide and then we read out quantitatively 143 00:08:36,000 --> 00:08:38,000 what genes are turned on at what levels. 144 00:08:38,000 --> 00:08:44,000 So we do this over and over and over again for brains that we've collected. 145 00:08:44,000 --> 00:08:47,000 As I mentioned we've collected 6 brains in total. 146 00:08:47,000 --> 00:08:51,000 We collect samples from about 1000 structures in every brain 147 00:08:51,000 --> 00:08:55,000 that we've looked at, so it's a massive amount of data. 148 00:08:55,000 --> 00:08:59,000 And we pull all of this together, back into a common framework, 149 00:08:59,000 --> 00:09:04,000 that is a free and open resource for scientists around the world to use. 150 00:09:04,000 --> 00:09:09,000 So at the Allen Institute for Brain Science, we've been generating 151 00:09:09,000 --> 00:09:12,000 these kinds of data resources for almost a decade. 152 00:09:12,000 --> 00:09:16,000 They're free to use for anybody, they're online tools, 153 00:09:16,000 --> 00:09:21,000 just for example today a given workday, there'll be about 1000 unique visitors 154 00:09:21,000 --> 00:09:26,000 that come in from labs around the world to come use our resources and data. 155 00:09:26,000 --> 00:09:30,000 They get access to tools like this, which allows them 156 00:09:30,000 --> 00:09:34,000 to see all that anatomy and the structure that we created before 157 00:09:34,000 --> 00:09:40,000 and to start mapping in then the things that they're particularly interested in. 158 00:09:40,000 --> 00:09:43,000 So in this case you're looking at the structure 159 00:09:43,000 --> 00:09:46,000 and they're going to look at these color balls 160 00:09:46,000 --> 00:09:49,000 are representing a particular gene 161 00:09:49,000 --> 00:09:53,000 they're interested in that's either being turned up or down 162 00:09:53,000 --> 00:09:58,000 in those various areas depending on the heat color that's specified there. 163 00:09:58,000 --> 00:10:02,000 So what are people doing when they come in and using these resources? 164 00:10:02,000 --> 00:10:06,000 Well, one of the things that you might hear lots about 165 00:10:06,000 --> 00:10:08,000 is human genetic studies. 166 00:10:08,000 --> 00:10:12,000 Obviously if you're very interested in understanding disease 167 00:10:12,000 --> 00:10:15,000 there's a genetic underpinning to many of them. 168 00:10:15,000 --> 00:10:17,000 So you'd like more information, 169 00:10:17,000 --> 00:10:21,000 you do a large-scale study and you get out of those studies 170 00:10:21,000 --> 00:10:25,000 collections of genes and one of the first things 171 00:10:25,000 --> 00:10:28,000 you're going to want to know is more information. 172 00:10:28,000 --> 00:10:33,000 Is there something I can learn about the location of these genes 173 00:10:33,000 --> 00:10:36,000 that gives me additional clues as to their function, 174 00:10:36,000 --> 00:10:40,000 ways in which I might intervene in the disease process. 175 00:10:40,000 --> 00:10:45,000 They're also very interested in understanding human genetic diversity. 176 00:10:45,000 --> 00:10:50,000 Now we've already looked at 6 brains but as we know, every human is very unique. 177 00:10:50,000 --> 00:10:52,000 We celebrate our differences; 178 00:10:52,000 --> 00:10:58,000 this is a snapshot of the great workforce at the Allen Institute for Brain Science 179 00:10:58,000 --> 00:11:02,000 who does all the great work that I'm talking about today. 180 00:11:02,000 --> 00:11:06,000 But remarkably when we look at this level at the underlying data 181 00:11:06,000 --> 00:11:11,000 and this is a lot of data from 2 completely unrelated individuals 182 00:11:11,000 --> 00:11:15,000 there's a very high degree of correlation, correspondence. 183 00:11:15,000 --> 00:11:20,000 So this is looking at 1000's of different measurements of gene expressions 184 00:11:20,000 --> 00:11:23,000 across many, many different areas of the brain. 185 00:11:23,000 --> 00:11:26,000 And there's a very high degree of correspondence. 186 00:11:26,000 --> 00:11:28,000 This was very reassuring to us. 187 00:11:28,000 --> 00:11:32,000 First because when you generate data on this scale 188 00:11:32,000 --> 00:11:38,000 you want to make sure that it's high quality, so reproducibility is obviously important, 189 00:11:38,000 --> 00:11:42,000 but it was also important because we feel that it's given us 190 00:11:42,000 --> 00:11:45,000 a great snapshot into the human brain. 191 00:11:45,000 --> 00:11:49,000 And the people using the data, even with our low n have confidence 192 00:11:49,000 --> 00:11:52,000 that what they're seeing has some relevance. 193 00:11:52,000 --> 00:11:57,000 Now not everything is correlated here, you can see some outliers, 194 00:11:57,000 --> 00:12:00,000 and of course those outliers are going to be interesting 195 00:12:00,000 --> 00:12:02,000 related to human differences. 196 00:12:02,000 --> 00:12:05,000 We did study a couple of years ago 197 00:12:05,000 --> 00:12:10,000 in which we tried to understand a little better about those differences 198 00:12:10,000 --> 00:12:14,000 and looked at multiple individuals and different gene products 199 00:12:14,000 --> 00:12:19,000 and what we find is that a tendency and as a rule is that those differences 200 00:12:19,000 --> 00:12:23,000 tend to be in very specific cell populations or cell types, 201 00:12:23,000 --> 00:12:25,000 cell classes as I mentioned before. 202 00:12:25,000 --> 00:12:30,000 So, this is an example of 2 different genes that are turned on 203 00:12:30,000 --> 00:12:34,000 in a very specific layers of the neocortex only in one individual 204 00:12:34,000 --> 00:12:36,000 nd not found in another. 205 00:12:36,000 --> 00:12:40,000 Now we have no idea if that's due to environmental changes, 206 00:12:40,000 --> 00:12:43,000 environmental influences or if it's just genetics. 207 00:12:43,000 --> 00:12:48,000 But we did do a study in which we looked at the mouse several years ago 208 00:12:48,000 --> 00:12:53,000 and we were looking at genes that encode for, in this case a DRD2, 209 00:12:53,000 --> 00:12:56,000 the gene listed on the top is a dopamine receptor. 210 00:12:56,000 --> 00:13:01,000 Tyrosine hydroxylase (TH) is a gene involved in dopamine biosynthesis 211 00:13:01,000 --> 00:13:05,000 and those 2 gene products are very different in the cell types 212 00:13:05,000 --> 00:13:08,000 in these individual mouse brains. 213 00:13:08,000 --> 00:13:13,000 So, over on the left is “C57 black 6” which is a commonly used mouse strain, 214 00:13:13,000 --> 00:13:17,000 and then spread at the other end is a wild type strain. 215 00:13:17,000 --> 00:13:21,000 And so the further you go the more genetically unrelated you are. 216 00:13:21,000 --> 00:13:26,000 And when we looked in total across, sort of evolution if you will, 217 00:13:26,000 --> 00:13:30,000 across genetic relatedness, the further you were genetically unrelated, 218 00:13:30,000 --> 00:13:33,000 the more of these very specific cell types, 219 00:13:33,000 --> 00:13:36,000 specific changes, you could see. 220 00:13:36,000 --> 00:13:39,000 So at the Allen Institute for the next decade 221 00:13:39,000 --> 00:13:42,000 we're embarking on a pretty ambitious program 222 00:13:42,000 --> 00:13:47,000 to start to understand the cell types, understand the cell differences 223 00:13:47,000 --> 00:13:52,000 and how they ultimately relate to the functional properties of the brain. 224 00:13:52,000 --> 00:13:56,000 This is, I think, critical information for the entire field, 225 00:13:56,000 --> 00:14:00,000 to start linking up all of these fundamental parts which are cells, 226 00:14:00,000 --> 00:14:02,000 to how they're connected, 227 00:14:02,000 --> 00:14:06,000 the underlying molecules that drive those connections, 228 00:14:06,000 --> 00:14:10,000 the underlying molecules that drive the physiological properties, 229 00:14:10,000 --> 00:14:14,000 the electric chemical properties and then ultimately 230 00:14:14,000 --> 00:14:17,000 the functional properties of those cells. 231 00:14:17,000 --> 00:14:20,000 So we're doing this in 3 different areas of research. 232 00:14:20,000 --> 00:14:24,000 First we're focusing on the mouse, the mouse visual system, 233 00:14:24,000 --> 00:14:27,000 to look at, in real-time, in the living animal 234 00:14:27,000 --> 00:14:31,000 the functions of a variety of different cells. 235 00:14:31,000 --> 00:14:35,000 We're linking these in this concept in the middle of cell types, 236 00:14:35,000 --> 00:14:38,000 trying really understand the underlying molecules 237 00:14:38,000 --> 00:14:42,000 in all the properties as they relate to those functions 238 00:14:42,000 --> 00:14:45,000 and then we're looking at the human. 239 00:14:45,000 --> 00:14:49,000 In the human we're doing this both in the middle and cell types 240 00:14:49,000 --> 00:14:53,000 using the tissue driven work that I talked about before 241 00:14:53,000 --> 00:14:57,000 but also we're doing it in vitro using stem cell technology. 242 00:14:57,000 --> 00:15:01,000 We're learning how to make very specific cell types 243 00:15:01,000 --> 00:15:03,000 within the dish and then being able to test 244 00:15:03,000 --> 00:15:07,000 those functional properties and go back and forth 245 00:15:07,000 --> 00:15:10,000 between what we learn in the mouse to the human. 246 00:15:10,000 --> 00:15:15,000 So, with that I will finish and just say that it's an exciting time 247 00:15:15,000 --> 00:15:16,000 to be in biology 248 00:15:16,000 --> 00:15:19,000 and an exciting time to be in neuroscience. 249 00:15:19,000 --> 00:15:24,000 I think the technology of the day has come well beyond the pen and paper 250 00:15:24,000 --> 00:15:29,000 and it's really time for a renaissance in our understanding of this complex organ. 251 00:15:29,000 --> 00:15:30,000 Thanks.