Difference between revisions of "Sumeet Gupta"

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[[Sumeet_Gupta| Sumeet Gupta]] <br>
 
[[Sumeet_Gupta| Sumeet Gupta]] <br>
Bioinformatics Analyst, <br>
+
Bioinformatics and Sequencing Supervisor, <br>
Phone: 617-258-8803 <br>
+
Phone: 617-324-0339 <br>
 
Email: sgupta at wi dot mit dot edu <br>
 
Email: sgupta at wi dot mit dot edu <br>
 
|}
 
|}
 
= Frequently Asked Questions =
 
== Solexa Data Processing ==
 
=== Do we filter "bad" reads from the final dataset? ===
 
 
Yes, the default Illumina pipeline quality filter is used, which uses a threshold of CHASTITY >= 0.6. Chastity for a given base call is defined as "the ratio of the highest of the four (base type) intensities to the sum of highest two." This filter is used to identify clusters with a low signal to noise ratio, often as a result of two adjacent clusters being so physically close together that their signals cannot be measured independently.
 
 
== Solexa Quality Scores ==
 
=== What is the format of the quality scores files (fasta files)? ===
 
 
@4:1:518:715 <br>
 
GATACCATAAAAGCTGGATCCTTCTTCAAGCATAA <br>
 
+4:1:518:715 <br>
 
hhhhhhhhhhhhhhhdhhhhhhhhhhhdRehdhhP <br>
 
 
@ID <br>
 
Sequence <br>
 
+ID <br>
 
Quality Scores for each base (String of characters) <br>
 
 
=== What do the quality scores for each base mean? ===
 
 
P(error) - Probability of the base call being incorrect. <br>
 
 
{| cellpadding="2" style="border:1px solid darkgray;"
 
|-
 
|Char||ASCII||Char-64||P(error)
 
|-
 
|;||59||-5||0.7597
 
|-
 
|<||60||-4||0.7153
 
|-
 
|=||61||-3||0.6661
 
|-
 
|>||62||-2||0.6131
 
|-
 
|?||63||-1||0.5573
 
|-
 
|@||64||0||0.5
 
|-
 
|A||65||1||0.4427
 
|-
 
|B||66||2||0.3869
 
|-
 
|C||67||3||0.3339
 
|-
 
|D||68||4||0.2847
 
|-
 
|E||69||5||0.2403
 
|-
 
|F||70||6||0.2008
 
|-
 
|G||71||7||0.1663
 
|-
 
|H||72||8||0.1368
 
|-
 
|I||73||9||0.1118
 
|-
 
|J||74||10||0.0909
 
|-
 
|K||75||11||0.0736
 
|-
 
|L||76||12||0.0594
 
|-
 
|M||77||13||0.0477
 
|-
 
|N||78||14||0.0383
 
|-
 
|O||79||15||0.0307
 
|-
 
|P||80||16||0.0245
 
|-
 
|Q||81||17||0.0196
 
|-
 
|R||82||18||0.0156
 
|-
 
|S||83||19||0.0124
 
|-
 
|T||84||20||0.0099
 
|-
 
|U||85||21||0.0079
 
|-
 
|V||86||22||0.0063
 
|-
 
|W||87||23||0.005
 
|-
 
|X||88||24||0.004
 
|-
 
|Y||89||25||0.0032
 
|-
 
|Z||90||26||0.0025
 
|-
 
|[||91||27||0.002
 
|-
 
|\||92||28||0.0016
 
|-
 
|]||93||29||0.0013
 
|-
 
|^||94||30||0.001
 
|-
 
|_||95||31||0.0008
 
|-
 
|`||96||32||0.0006
 
|-
 
|a||97||33||0.0005
 
|-
 
|b||98||34||0.0004
 
|-
 
|c||99||35||0.0003
 
|-
 
|d||100||36||0.0003
 
|-
 
|e||101||37||0.0002
 
|-
 
|f||102||38||0.0002
 
|-
 
|g||103||39||0.0001
 
|-
 
|h||104||40||0.0001
 
|-
 
|}
 
 
=== Is solexa quality same as phred quality scores? ===
 
The Solexa quality and Phred quality are asymptotically identical but NOT the same. If the error probability of a base is $e, the Solexa quality $sQ is:
 
$sQ = -10 * log($e / (1 - $e)) / log(10);
 
 
Solexa quality $sQ can be converted to Phred quality $Q with this formula:
 
$Q = 10 * log(1 + 10 ** ($sQ / 10.0)) / log(10);
 
 
== Alignment of Next Generation Sequencing Reads ==
 
 
=== What is Eland? ===
 
ELAND stands for E fficient L arge-Scale A lignment of N ucleotide D atabases. ELAND is a alignment tool developed by Illumina/Solexa which searches a set of large DNA files for a large number of short DNA reads allowing up to 2 errors per match.
 
 
=== How can Eland be faster relative to some other alignment programs? ===
 
Given a sequence of length N, it can be divided into four subsequences (A, B, C, and D), which are of equal (or nearly equal length). Assuming there are no more than 2 errors, at least two of these subsequences will be "error free", so that the two error free sequences can then be searched for in a database containing all possible subsequences in the genome of interest. Thus, you can search your database for the subsequence AB and CD. Searching for the {AB and CD} subsequences would only work if the first half of your sequence has no errors. What if B and C had the errors? The answer is to shuffle your subsequences to make other combinations: ({AB and CD}, {AC and BD}, {AD and CD}, {BA and CD}, etc.). This still provides you with a relatively small search space for each sequence, as there are only 4! possible combinations (which is 4x3x2x1 = 24 possible sequences) to search for. This can be bound even further because the first pair and second pair are in the correct order, (ie {AB and CD} and {AC and BD} are ok, but {CA and DB} and {BA and DC} would give you an incorrect result) limiting you to only six possible combinations, which still allows you to find any correct match where at least two of the four subsequences are error free.
 
 
Combining these subsequences into 2 subsets rather than searching for 4 independent entries in their database speeds up the process as long as one set matches (matching criteria on the other set can be relaxed, ie, allowing for mismatches). That is to say, if you make two sequences out of the 4 subsequences {AB and CD}, you can search for an exact match for AB, and test all the possible results for mismatches in the {CD} portion of the sequence. This has the effect of significantly reducing the search space. (Only sequences containing the exact match to {AB})
 

Latest revision as of 08:53, 31 January 2024

Sumeet.jpg

Sumeet Gupta
Bioinformatics and Sequencing Supervisor,
Phone: 617-324-0339
Email: sgupta at wi dot mit dot edu