1 00:00:00,000 --> 00:00:26,000 [MUSIC] 2 00:00:26,000 --> 00:00:31,000 So, in many ways a broken car is not so different from a disease, 3 00:00:31,000 --> 00:00:34,000 when the engine is smoking and the lights don't come up. 4 00:00:34,000 --> 00:00:38,000 There's a fundamental difference, however, between humans and cars. 5 00:00:38,000 --> 00:00:44,000 If I can get my car to a mechanic, I can be pretty certain that they can fix it, 6 00:00:44,000 --> 00:00:49,000 which is much more than we can say about many of our diseases today. 7 00:00:49,000 --> 00:00:56,000 So why can a mechanic, with much less education and much less bucks than a doctor, 8 00:00:56,000 --> 00:01:02,000 fix our car, while our doctors often let us go with diseases persisting in our body? 9 00:01:02,000 --> 00:01:08,000 Well, there are a number of things that actually a mechanic has that our doctor doesn't have right now. 10 00:01:08,000 --> 00:01:12,000 First of all, it's got a parts list. 11 00:01:12,000 --> 00:01:16,000 It has a blueprint telling us how the pieces connect together. 12 00:01:16,000 --> 00:01:21,000 It has diagnostics tools to figure out where the components, which is broken and what is healthy. 13 00:01:21,000 --> 00:01:25,000 It has the means, essentially, to replace the parts. 14 00:01:25,000 --> 00:01:29,000 Now let's think about it. Which of these components are available to our doctor today? 15 00:01:29,000 --> 00:01:34,000 Well, the good news is that they've finally got the parts list. 16 00:01:34,000 --> 00:01:38,000 That was the outcome of the Human Genome Project. 17 00:01:38,000 --> 00:01:42,000 And when the human genome was actually mapped about ten years ago, we thought 18 00:01:42,000 --> 00:01:48,000 It's going to be easy from now. From the parts, we will have essentially the world bonanza that we need to fix us, humans. 19 00:01:48,000 --> 00:01:58,000 But of course reality sinks in. We also thought that these many pieces will eventually give us lots of drugs. 20 00:01:58,000 --> 00:02:05,000 In 2001, or 2000, the year before the genome project was unveiled, the FDA approved about a hundred drugs per year. 21 00:02:05,000 --> 00:02:09,000 We thought this number could only go up. 22 00:02:09,000 --> 00:02:12,000 It could only just increase. 23 00:02:12,000 --> 00:02:14,000 Yet the reality sinks in. 24 00:02:14,000 --> 00:02:19,000 The number of new drugs in just the last ten years, went from a hundred before the genome, to about twenty per year. 25 00:02:19,000 --> 00:02:24,000 In hindsight, the reason is pretty clear. 26 00:02:24,000 --> 00:02:28,000 It's not enough to have the parts list. 27 00:02:28,000 --> 00:02:32,000 We also need to actually figure out how the pieces fit together. 28 00:02:32,000 --> 00:02:40,000 That is, we should not look at this picture, but rather we should be looking at how the wiring diagram of the car looks like. 29 00:02:40,000 --> 00:02:44,000 How the wiring of ourselves actually look like. 30 00:02:44,000 --> 00:02:51,000 How the genes and the proteins and the metabolites link to each other, forming a conistent network. 31 00:02:51,000 --> 00:02:58,000 Because this network, which I am going to try to tell you today, is really the key to understanding human diseases. 32 00:02:58,000 --> 00:03:05,000 Now, the problem is that if you look at this map, you soon realize that it looks completely random. 33 00:03:05,000 --> 00:03:08,000 Randomness certainly has the upper hand. 34 00:03:08,000 --> 00:03:13,000 But down the line, it is not. I believe there is a deep order behind this wiring diagram. 35 00:03:13,000 --> 00:03:19,000 And understanding that order is the key to understand human diseases. 36 00:03:19,000 --> 00:03:25,000 Now, I am a physicist, and the conventional wisdom is that as a physicist, I should be studying very big objects: 37 00:03:25,000 --> 00:03:29,000 stars, quasars, or very tiny ones like the Higgs boson and quarks. 38 00:03:29,000 --> 00:03:36,000 Yet about a decade ago, my interest has turned to a completely different subject: Complex systems and networks. 39 00:03:36,000 --> 00:03:44,000 And that's because our very existence depends on the successful functioning of systems and networks behind us. 40 00:03:44,000 --> 00:03:54,000 And I also believe the scientific challenges behind complex systems and networks are just as deep as behind quarks or quasars. 41 00:03:54,000 --> 00:03:58,000 So I started looking at the structure of the Internet. 42 00:03:58,000 --> 00:04:04,000 Telling us how many, many computers are linked together by various cables. 43 00:04:04,000 --> 00:04:14,000 I looked at the structure of the social network, telling us how do societies wire together through many friendship and other linkages. 44 00:04:14,000 --> 00:04:18,000 And eventually I started looking at the structure of the cell. 45 00:04:18,000 --> 00:04:23,000 Telling us you our genes and proteins link to each other into a coherent network. 46 00:04:23,000 --> 00:04:27,000 And through that path, I arrived at human diseases. 47 00:04:27,000 --> 00:04:30,000 A path that is rarely taken by physicists. 48 00:04:30,000 --> 00:04:35,000 Now, the fundamental question that really comes up from that is: 49 00:04:35,000 --> 00:04:43,000 How do we think about diseases in the context of these of these very very complicated networks? 50 00:04:43,000 --> 00:04:51,000 And from that, let me turn to a map that we all understand, probably the most famous map out there, which is the map of Manhattan. 51 00:04:51,000 --> 00:04:57,000 Now, in many ways, Manhattan is structured different from a cell. 52 00:04:57,000 --> 00:05:04,000 But let's for a moment carry with me and let's believe together that this is really not a map of Manhattan but a map of a cell. 53 00:05:04,000 --> 00:05:09,000 Where the intersections showing us nodes are the genes and the proteins. 54 00:05:09,000 --> 00:05:14,000 And the street segments that connect them corresponds to the interactions between them. 55 00:05:14,000 --> 00:05:20,000 Now, down the line, this is not so different from what happens in our cells. 56 00:05:20,000 --> 00:05:27,000 The busy life of Manhattan very easily maps into the crowded life of the cell where molecules interact with each other, 57 00:05:27,000 --> 00:05:30,000 and recombine and transport and so on. 58 00:05:30,000 --> 00:05:35,000 So there's lots of similarities on the surface between them. 59 00:05:35,000 --> 00:05:39,000 And if we look at Manhattan, we also realize that action is not uniformly spread within the city. 60 00:05:39,000 --> 00:05:46,000 If you want to go, for example, to the theater, you don't go to ANY parts of Manhattan, you would go to the theater district. 61 00:05:46,000 --> 00:05:50,000 Because that's where most of the theaters are, that's where the shows are. 62 00:05:50,000 --> 00:05:57,000 If you want to buy an artwork. You will not actually be going ANYwhere in the city, but you would be going to the gallery district. 63 00:05:57,000 --> 00:06:04,000 Because there is one small region in the town that has most of the high-end galleries, and that's where most of the artwork is for sale. 64 00:06:04,000 --> 00:06:06,000 The same is true in the cell. 65 00:06:06,000 --> 00:06:10,000 Its functions are not spread uniformly within the network. 66 00:06:10,000 --> 00:06:14,000 But there are other pockets within the network that are responsible for particular functions, 67 00:06:14,000 --> 00:06:18,000 and their breakdown potentially leads to disease. 68 00:06:18,000 --> 00:06:22,000 So the way to think about disease in the context of the network is to think that 69 00:06:22,000 --> 00:06:26,000 there are different regions that correspond to different diseases on this map. 70 00:06:26,000 --> 00:06:31,000 So, for example, you could say that cancer stays somewhere around Wall Street 71 00:06:31,000 --> 00:06:33,000 [AUDIENCE LAUGHTER] 72 00:06:33,000 --> 00:06:38,000 And bipolar disease would be somewhere around Times Square. 73 00:06:38,000 --> 00:06:39,000 [AUDIENCE LAUGHTER] 74 00:06:39,000 --> 00:06:46,000 And you know asthma, a respiratory disease, it would be somewhere up next to the Washington Bridge. 75 00:06:46,000 --> 00:06:51,000 Where Manhattan breathes its people and cars into New Jersey and The Bronx. 76 00:06:51,000 --> 00:06:52,000 [AUDIENCE LAUGHTER] 77 00:06:52,000 --> 00:06:55,000 Now, under normal conditions 78 00:06:55,000 --> 00:06:58,000 Manhattan is full of traffic. 79 00:06:58,000 --> 00:07:01,000 And that's how the cell looks like normally. 80 00:07:01,000 --> 00:07:07,000 But if we had defects, some genes breaking down, that corresponds to some of the intersections not working, and 81 00:07:07,000 --> 00:07:12,000 soon enough we would get a very typical Manhattan disease: A traffic jam. 82 00:07:12,000 --> 00:07:16,000 This is not so different from what happens in our cells. 83 00:07:16,000 --> 00:07:19,000 Because there are many different ways you can get the same phenotype. 84 00:07:19,000 --> 00:07:24,000 In the same way, there are many different ways you can get a disease. 85 00:07:24,000 --> 00:07:33,000 For example, there was a famous study by Burt [???]'s group which sequenced about 300 individuals who all had colo-rectal cancer. 86 00:07:33,000 --> 00:07:34,000 They had the same phenotype. 87 00:07:34,000 --> 00:07:41,000 Therefore the expectation was that all of them would have probably the same mutations in the same genes. 88 00:07:41,000 --> 00:07:49,000 Yet, the study showed that not only did they not have the same set of mutations, but the mutations were all in different groups of genes. 89 00:07:49,000 --> 00:07:56,000 There were no two individuals who would actually have the same genes exactly the same group of genes' defect. 90 00:07:56,000 --> 00:08:03,000 The only way to understand how it's possible that many different genes broken down in different combinations linked to the same disease, 91 00:08:03,000 --> 00:08:06,000 is to think in terms of Manhattan. 92 00:08:06,000 --> 00:08:12,000 If you think in terms of disease module and to really have the wiring diagram of the disease module, 93 00:08:12,000 --> 00:08:15,000 to understand the breakdown modes of the particular system. 94 00:08:15,000 --> 00:08:26,000 Now, if we really believe that particular picture, the next step for us is to say, how do we proceed from here? 95 00:08:26,000 --> 00:08:31,000 It's very easy. Get the map, find the disease module, and drug it. 96 00:08:31,000 --> 00:08:34,000 Now of course, you do realize there's a catch here. 97 00:08:34,000 --> 00:08:40,000 And the catch of course is, unlike for Manhattan, we don't have yet a map for the cells. 98 00:08:40,000 --> 00:08:46,000 I mean, we do, but some of the maps we have are very incomplete. 99 00:08:46,000 --> 00:08:49,000 For example, the best protein interaction that we have right now, 100 00:08:49,000 --> 00:08:54,000 we believe it has only five percent of the links that are supposed to be in our cells. 101 00:08:54,000 --> 00:09:01,000 Now, having five percent of the links means that we are missing 95% of the links. 102 00:09:01,000 --> 00:09:04,000 And that has dramatic consequences on the system. 103 00:09:04,000 --> 00:09:07,000 Let me illustrate that on Manhattan. 104 00:09:07,000 --> 00:09:14,000 Let's go ahead and take 95% of street segments and remove it from the map, and let's see what does it do to Manhattan. 105 00:09:14,000 --> 00:09:20,000 And the consequence is obvious. The network is broken into tiny pieces. 106 00:09:20,000 --> 00:09:25,000 And as a result, the modules, the Wall Street neighborhood and the Times Square neighborhood 107 00:09:25,000 --> 00:09:29,000 that were clearly distinguishable before would be all over the map. 108 00:09:29,000 --> 00:09:32,000 You don't know any more where your disease module is. 109 00:09:32,000 --> 00:09:34,000 So what can we do then? 110 00:09:34,000 --> 00:09:38,000 Well, first and foremost, we must improve on our maps. 111 00:09:38,000 --> 00:09:44,000 And that's what my colleague Marc Vidal does at Dana-Farber Cancer Institute, 112 00:09:44,000 --> 00:09:50,000 who in the last twenty years has developed a whole series of automatic tools to systematically map 113 00:09:50,000 --> 00:09:55,000 the protein interactions within the cell, one of the very important components of the cellular network. 114 00:09:55,000 --> 00:10:02,000 As a result of his work, a few years ago, we got what we call the 5% map, the one I referred to earlier. 115 00:10:02,000 --> 00:10:09,000 This year, he's about to unveil another landmark: the 20% map of the human cell. 116 00:10:09,000 --> 00:10:14,000 And if we left him on the same track, actually he would do the full network. 117 00:10:14,000 --> 00:10:21,000 It may take a decade or two to get to it, but eventually [???] and many others, we will get a map. 118 00:10:21,000 --> 00:10:23,000 But what until then? 119 00:10:23,000 --> 00:10:25,000 Shall we just wait for him to finish the work? 120 00:10:25,000 --> 00:10:27,000 And the answer is, well, not really. 121 00:10:27,000 --> 00:10:31,000 There's lots of things we can actually do using the existing maps. 122 00:10:31,000 --> 00:10:33,000 This is how the map looks like right now. 123 00:10:33,000 --> 00:10:36,000 This is all the interactions we believe should be in the cell. 124 00:10:36,000 --> 00:10:41,000 And in order to understand where diseases lie in that, what I'm going to do next is 125 00:10:41,000 --> 00:10:46,000 I will go ahead and place on this map a particular disease, in this case asthma. 126 00:10:46,000 --> 00:10:52,000 Asthma is a respiratory disease that leads to coughing, shortness of breath, and many other symptoms, and 127 00:10:52,000 --> 00:10:57,000 there has been tremendous amount of research on the [???] genetic origins of asthma. 128 00:10:57,000 --> 00:11:01,000 Therefore, we about a hundred genes that are known to be associated with asthma. 129 00:11:01,000 --> 00:11:07,000 So if we put them on the map, and I'm showing them now here as purple nodes, 130 00:11:07,000 --> 00:11:10,000 then we would expect them to be all together. 131 00:11:10,000 --> 00:11:12,000 Because they really should correspond to our disease model. 132 00:11:12,000 --> 00:11:14,000 But they're not. They're all over the map. 133 00:11:14,000 --> 00:11:20,000 And the reason they're all over the map is because we're missing 95% of the interactions. 134 00:11:20,000 --> 00:11:25,000 So the critical links that would really hold them together in one module are all gone, they are not there yet. 135 00:11:25,000 --> 00:11:29,000 So what is it we can do next? 136 00:11:29,000 --> 00:11:31,000 We can use the power of the network. 137 00:11:31,000 --> 00:11:39,000 They are really built into the network and try to figure out other genes that may also be involved in asthma, about whom we don't know yet. 138 00:11:39,000 --> 00:11:41,000 And that's exactly what we did next. 139 00:11:41,000 --> 00:11:48,000 We took this map and we run algorithm through that, that really extract the information from this map, 140 00:11:48,000 --> 00:11:50,000 and identify what you see in front of your eyes. 141 00:11:50,000 --> 00:11:53,000 The asthma module within the cell. 142 00:11:53,000 --> 00:12:00,000 Now if we know the asthma module, from there we can understand the disease's mechanism, the disease's pathways, 143 00:12:00,000 --> 00:12:04,000 and one day can actually help us understand the drugs. 144 00:12:04,000 --> 00:12:07,000 But this is not only true for asthma. 145 00:12:07,000 --> 00:12:10,000 Not only asthma is located well in the network. 146 00:12:10,000 --> 00:12:15,000 You can take some other diseases, for example COPD, and try to do the same thing. 147 00:12:15,000 --> 00:12:18,000 COPD is often called the smokers' disease, 148 00:12:18,000 --> 00:12:20,000 because smokers are at a very high chance of getting it, 149 00:12:20,000 --> 00:12:23,000 and has somewhat similar symptoms to asthma. 150 00:12:23,000 --> 00:12:29,000 Not surprisingly, it seems to be that the two modules are significantly overlapping, 151 00:12:29,000 --> 00:12:32,000 and are certainly in the same region of the network. 152 00:12:32,000 --> 00:12:38,000 We do expect, however, to have other diseases that would be in a completely different part of the network. 153 00:12:38,000 --> 00:12:43,000 And what is crucial here is to understand that the relationship between these diseases, 154 00:12:43,000 --> 00:12:48,000 to what degree they overlap, and how they relate to each other is really crucial to understand 155 00:12:48,000 --> 00:12:52,000 how they relate to each other. 156 00:12:52,000 --> 00:12:55,000 and whether they are similar or very different from each other. 157 00:12:55,000 --> 00:13:01,000 So one way to look at it is to let's look at the relationship of all diseases. 158 00:13:01,000 --> 00:13:03,000 And that's what I'm showing you here. 159 00:13:03,000 --> 00:13:09,000 Here in the next slide, every node corresponds to a particular disease, 160 00:13:09,000 --> 00:13:13,000 and two diseases are connected to each other if they share a gene. 161 00:13:13,000 --> 00:13:18,000 Why would you do that? Because if they share a gene, then very likely their disease module overlaps, 162 00:13:18,000 --> 00:13:22,000 and therefore they must be in the same region of the network. 163 00:13:22,000 --> 00:13:28,000 And what is amazing about this map is that there are links between apparently unrelated diseases, 164 00:13:28,000 --> 00:13:35,000 which is telling us that if you really want to treat--if you have two diseases and want to treat them, today you may go to different doctors, 165 00:13:35,000 --> 00:13:37,000 different hospitals, different floors. 166 00:13:37,000 --> 00:13:41,000 But down at the level of the cell, they are not independent of each other. 167 00:13:41,000 --> 00:13:45,000 They're connected because they're rooted in somewhat the same neighborhood. 168 00:13:45,000 --> 00:13:52,000 So what this is telling us, this "diseasedom" as I will call it, is that if we want to understand disease, 169 00:13:52,000 --> 00:14:01,000 we should not be looking really at what we normally look at, but we should be looking at the network within our cells. 170 00:14:01,000 --> 00:14:09,000 This is the one that really matters. This is the one that really should tell us how to classify diseases. 171 00:14:09,000 --> 00:14:10,000 You know, we probably got it fundamentally wrong. 172 00:14:10,000 --> 00:14:13,000 It's not heart, it's not brains, it's not kidneys. 173 00:14:13,000 --> 00:14:20,000 Sooner or later we must abandon this organ-based description of disease and turn to what really matter. 174 00:14:20,000 --> 00:14:31,000 We should stop training cardiologists and neurologists, and rather the doctor of the future needs to become a bit of networkologist, 175 00:14:31,000 --> 00:14:36,000 to understand where diseases are lying within that network and how they relate to each other. 176 00:14:36,000 --> 00:14:45,000 So I personally believe we need a new medicine, to truly execute the paradigm change that genomics allowed us to achieve. 177 00:14:45,000 --> 00:14:52,000 I would call it network medicine, and I think it's really within our footstep to do and achieve that. 178 00:14:52,000 --> 00:14:59,000 I also think that network medicine will not only help us understand the mechanism of disease, 179 00:14:59,000 --> 00:15:10,000 but it will affect all aspects of healthcare, from the role of the environment all the way to how we actually deliver care to a particular patient. 180 00:15:10,000 --> 00:15:23,000 So, coming back to our original question, the good news is that doctors are increasing many of the tools that the car mechanic has today. 181 00:15:23,000 --> 00:15:27,000 If you think about it, the genomics provides the parts list, 182 00:15:27,000 --> 00:15:30,000 metabiomics and proteomics provide the diagnostic tools, 183 00:15:30,000 --> 00:15:38,000 and gene therapy is really giving us the way one day to replace the components, with the pieces that are not broken. 184 00:15:38,000 --> 00:15:42,000 But a car mechanic would be useless without a blueprint. 185 00:15:42,000 --> 00:15:49,000 And in the same way I believe that to truly understand diseases, we need to give into the hands of our doctors the map. 186 00:15:49,000 --> 00:15:56,000 Now I'm a physicist, and a network scientist. I am not a medical doctor. 187 00:15:56,000 --> 00:16:00,000 Hence, I will never cure any of your diseases. 188 00:16:00,000 --> 00:16:04,000 I can help, however, decipher the map: 189 00:16:04,000 --> 00:16:09,000 The real book of life, the book that is currently missing most of its pages. 190 00:16:09,000 --> 00:16:16,000 But once we learn to read it, we'll get much closer to the secret of life and curing disease. 191 00:16:16,000 --> 00:16:18,000 Thank you very much. 192 00:16:18,000 --> 00:16:22,000 [APPLAUSE]